Herramienta “El generador de valor de datos”

Paso 1. definir el area del negocio que buscamos impactar o mejorar y su KPI R: El area de negocio que se busca impactar es el departamento de ventas Paso 2. seleccionar la plantilla (-s) para crear valor a partir de los datos de los clientes
Vision |Segmentacion | personalizacion | contextualizacion
R: Se selecciono la plantilla de segmentacion Paso 3. generar ideas o conceptos especificos
Elaborar un market basket analysis para obtener informacion acerca de los clientes y sus patrones de compra Paso 4. reunir los datos requeridos
Se reunen los datos necesarios para crear el market basket, en est ecaso informacion de los productos. Paso 5. plan de ejecucion.
El departamento de ventas y marketing podra tomar una decision en base a los reusltados obtenidos

A la base de datos se le hicieron los siguientes cambios:
Formato a fecha corta
Se duplicaon los primeros 5 registros
se le cambio el formato a hora (mexico)
Se cambio el formato de codigo de barras
se guardo como CSV UST-8

Importar base de datos

#file.choose()
bd <- read.csv ("/Users/andreapaolasosa/Desktop/abarrotes.csv")

Entender la base de datos

summary(bd)
##  vcClaveTienda        DescGiro         Codigo.Barras            PLU        
##  Length:200625      Length:200625      Min.   :8.347e+05   Min.   : 1.00   
##  Class :character   Class :character   1st Qu.:7.501e+12   1st Qu.: 1.00   
##  Mode  :character   Mode  :character   Median :7.501e+12   Median : 1.00   
##                                        Mean   :5.950e+12   Mean   : 2.11   
##                                        3rd Qu.:7.501e+12   3rd Qu.: 1.00   
##                                        Max.   :1.750e+13   Max.   :30.00   
##                                                            NA's   :199188  
##     Fecha               Hora              Marca            Fabricante       
##  Length:200625      Length:200625      Length:200625      Length:200625     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
##                                                                             
##                                                                             
##    Producto             Precio          Ult.Costo         Unidades     
##  Length:200625      Min.   :-147.00   Min.   :  0.38   Min.   : 0.200  
##  Class :character   1st Qu.:  11.00   1st Qu.:  8.46   1st Qu.: 1.000  
##  Mode  :character   Median :  16.00   Median : 12.31   Median : 1.000  
##                     Mean   :  19.42   Mean   : 15.31   Mean   : 1.262  
##                     3rd Qu.:  25.00   3rd Qu.: 19.23   3rd Qu.: 1.000  
##                     Max.   :1000.00   Max.   :769.23   Max.   :96.000  
##                                                                        
##     F.Ticket      NombreDepartamento NombreFamilia      NombreCategoria   
##  Min.   :     1   Length:200625      Length:200625      Length:200625     
##  1st Qu.: 33964   Class :character   Class :character   Class :character  
##  Median :105993   Mode  :character   Mode  :character   Mode  :character  
##  Mean   :193990                                                           
##  3rd Qu.:383005                                                           
##  Max.   :450040                                                           
##                                                                           
##     Estado              Mts.2      Tipo.ubicación         Giro          
##  Length:200625      Min.   :47.0   Length:200625      Length:200625     
##  Class :character   1st Qu.:53.0   Class :character   Class :character  
##  Mode  :character   Median :60.0   Mode  :character   Mode  :character  
##                     Mean   :56.6                                        
##                     3rd Qu.:60.0                                        
##                     Max.   :62.0                                        
##                                                                         
##  Hora.inicio        Hora.cierre       
##  Length:200625      Length:200625     
##  Class :character   Class :character  
##  Mode  :character   Mode  :character  
##                                       
##                                       
##                                       
## 

install.packages(“dplyr”)

library(dplyr)
## 
## Attaching package: 'dplyr'
## The following objects are masked from 'package:stats':
## 
##     filter, lag
## The following objects are masked from 'package:base':
## 
##     intersect, setdiff, setequal, union
#count(bd, ?..vcClaveTienda, sort = TRUE)
#count(bd, DescGiro, sort = TRUE)
#count(bd, Marca, sort = TRUE)
#count(bd, Fabricante, sort = TRUE)
#count(bd, Producto, sort = TRUE)
#count(bd, NombreDepartamento, sort = TRUE)
#count(bd, NombreFamilia, sort = TRUE)
#count(bd, NombreCategoria, sort = TRUE)
#count(bd, Estado, sort = TRUE)
#count(bd, Mts.2, sort = TRUE)
#count(bd, Tipo.ubicación, sort = TRUE)
#count(bd, Giro, sort = TRUE)
#count(bd, Hora.inicio, sort = TRUE)
#count(bd, Hora.cierre, sort = TRUE)

#install.packages("tidyverse")
library(tidyverse)
## ── Attaching packages
## ───────────────────────────────────────
## tidyverse 1.3.2 ──
## ✔ ggplot2 3.3.6     ✔ purrr   0.3.4
## ✔ tibble  3.1.8     ✔ stringr 1.4.1
## ✔ tidyr   1.2.1     ✔ forcats 0.5.2
## ✔ readr   2.1.2     
## ── Conflicts ────────────────────────────────────────── tidyverse_conflicts() ──
## ✖ dplyr::filter() masks stats::filter()
## ✖ dplyr::lag()    masks stats::lag()
tibble(bd)
## # A tibble: 200,625 × 22
##    vcClaveTienda DescGiro Codig…¹   PLU Fecha Hora  Marca Fabri…² Produ…³ Precio
##    <chr>         <chr>      <dbl> <int> <chr> <chr> <chr> <chr>   <chr>    <dbl>
##  1 MX001         Abarrot… 7.50e12    NA 6/19… 08:1… NUTR… MEXILAC Nutri …   16  
##  2 MX001         Abarrot… 7.50e12    NA 6/19… 08:2… DAN … DANONE… DANUP …   14  
##  3 MX001         Abarrot… 7.50e12    NA 6/19… 08:2… BIMBO GRUPO … Rebana…    5  
##  4 MX001         Abarrot… 7.50e12    NA 6/19… 08:2… PEPSI PEPSI-… Pepsi …    8  
##  5 MX001         Abarrot… 7.50e12    NA 6/19… 08:2… BLAN… FABRIC… Deterg…   19.5
##  6 MX001         Abarrot… 7.50e12    NA 6/19… 08:1… NUTR… MEXILAC Nutri …   16  
##  7 MX001         Abarrot… 7.50e12    NA 6/19… 08:2… DAN … DANONE… DANUP …   14  
##  8 MX001         Abarrot… 7.50e12    NA 6/19… 08:2… BIMBO GRUPO … Rebana…    5  
##  9 MX001         Abarrot… 7.50e12    NA 6/19… 08:2… PEPSI PEPSI-… Pepsi …    8  
## 10 MX001         Abarrot… 7.50e12    NA 6/19… 08:2… BLAN… FABRIC… Deterg…   19.5
## # … with 200,615 more rows, 12 more variables: Ult.Costo <dbl>, Unidades <dbl>,
## #   F.Ticket <int>, NombreDepartamento <chr>, NombreFamilia <chr>,
## #   NombreCategoria <chr>, Estado <chr>, Mts.2 <int>, Tipo.ubicación <chr>,
## #   Giro <chr>, Hora.inicio <chr>, Hora.cierre <chr>, and abbreviated variable
## #   names ¹​Codigo.Barras, ²​Fabricante, ³​Producto
str(bd)
## 'data.frame':    200625 obs. of  22 variables:
##  $ vcClaveTienda     : chr  "MX001" "MX001" "MX001" "MX001" ...
##  $ DescGiro          : chr  "Abarrotes" "Abarrotes" "Abarrotes" "Abarrotes" ...
##  $ Codigo.Barras     : num  7.5e+12 7.5e+12 7.5e+12 7.5e+12 7.5e+12 ...
##  $ PLU               : int  NA NA NA NA NA NA NA NA NA NA ...
##  $ Fecha             : chr  "6/19/2020" "6/19/2020" "6/19/2020" "6/19/2020" ...
##  $ Hora              : chr  "08:16:21 a. m." "08:23:33 a. m." "08:24:33 a. m." "08:24:33 a. m." ...
##  $ Marca             : chr  "NUTRI LECHE" "DAN UP" "BIMBO" "PEPSI" ...
##  $ Fabricante        : chr  "MEXILAC" "DANONE DE MEXICO" "GRUPO BIMBO" "PEPSI-COLA MEXICANA" ...
##  $ Producto          : chr  "Nutri Leche 1 Litro" "DANUP STRAWBERRY P/BEBER 350GR NAL" "Rebanadas Bimbo 2Pz" "Pepsi N.R. 400Ml" ...
##  $ Precio            : num  16 14 5 8 19.5 16 14 5 8 19.5 ...
##  $ Ult.Costo         : num  12.3 14 5 8 15 ...
##  $ Unidades          : num  1 1 1 1 1 1 1 1 1 1 ...
##  $ F.Ticket          : int  1 2 3 3 4 1 2 3 3 4 ...
##  $ NombreDepartamento: chr  "Abarrotes" "Abarrotes" "Abarrotes" "Abarrotes" ...
##  $ NombreFamilia     : chr  "Lacteos y Refrigerados" "Lacteos y Refrigerados" "Pan y Tortilla" "Bebidas" ...
##  $ NombreCategoria   : chr  "Leche" "Yogurt" "Pan Dulce Empaquetado" "Refrescos Plástico (N.R.)" ...
##  $ Estado            : chr  "Nuevo León" "Nuevo León" "Nuevo León" "Nuevo León" ...
##  $ Mts.2             : int  60 60 60 60 60 60 60 60 60 60 ...
##  $ Tipo.ubicación    : chr  "Esquina" "Esquina" "Esquina" "Esquina" ...
##  $ Giro              : chr  "Abarrotes" "Abarrotes" "Abarrotes" "Abarrotes" ...
##  $ Hora.inicio       : chr  "8:00" "8:00" "8:00" "8:00" ...
##  $ Hora.cierre       : chr  "22:00" "22:00" "22:00" "22:00" ...
head(bd)
##   vcClaveTienda  DescGiro Codigo.Barras PLU     Fecha           Hora
## 1         MX001 Abarrotes  7.501021e+12  NA 6/19/2020 08:16:21 a. m.
## 2         MX001 Abarrotes  7.501032e+12  NA 6/19/2020 08:23:33 a. m.
## 3         MX001 Abarrotes  7.501000e+12  NA 6/19/2020 08:24:33 a. m.
## 4         MX001 Abarrotes  7.501031e+12  NA 6/19/2020 08:24:33 a. m.
## 5         MX001 Abarrotes  7.501026e+12  NA 6/19/2020 08:26:28 a. m.
## 6         MX001 Abarrotes  7.501021e+12  NA 6/19/2020 08:16:21 a. m.
##                        Marca                 Fabricante
## 1                NUTRI LECHE                    MEXILAC
## 2                     DAN UP           DANONE DE MEXICO
## 3                      BIMBO                GRUPO BIMBO
## 4                      PEPSI        PEPSI-COLA MEXICANA
## 5 BLANCA NIEVES (DETERGENTE) FABRICA DE JABON LA CORONA
## 6                NUTRI LECHE                    MEXILAC
##                             Producto Precio Ult.Costo Unidades F.Ticket
## 1                Nutri Leche 1 Litro   16.0     12.31        1        1
## 2 DANUP STRAWBERRY P/BEBER 350GR NAL   14.0     14.00        1        2
## 3                Rebanadas Bimbo 2Pz    5.0      5.00        1        3
## 4                   Pepsi N.R. 400Ml    8.0      8.00        1        3
## 5      Detergente Blanca Nieves 500G   19.5     15.00        1        4
## 6                Nutri Leche 1 Litro   16.0     12.31        1        1
##   NombreDepartamento          NombreFamilia           NombreCategoria
## 1          Abarrotes Lacteos y Refrigerados                     Leche
## 2          Abarrotes Lacteos y Refrigerados                    Yogurt
## 3          Abarrotes         Pan y Tortilla     Pan Dulce Empaquetado
## 4          Abarrotes                Bebidas Refrescos Plástico (N.R.)
## 5          Abarrotes     Limpieza del Hogar                Lavandería
## 6          Abarrotes Lacteos y Refrigerados                     Leche
##       Estado Mts.2 Tipo.ubicación      Giro Hora.inicio Hora.cierre
## 1 Nuevo León    60        Esquina Abarrotes        8:00       22:00
## 2 Nuevo León    60        Esquina Abarrotes        8:00       22:00
## 3 Nuevo León    60        Esquina Abarrotes        8:00       22:00
## 4 Nuevo León    60        Esquina Abarrotes        8:00       22:00
## 5 Nuevo León    60        Esquina Abarrotes        8:00       22:00
## 6 Nuevo León    60        Esquina Abarrotes        8:00       22:00
head(bd, n=7)
##   vcClaveTienda  DescGiro Codigo.Barras PLU     Fecha           Hora
## 1         MX001 Abarrotes  7.501021e+12  NA 6/19/2020 08:16:21 a. m.
## 2         MX001 Abarrotes  7.501032e+12  NA 6/19/2020 08:23:33 a. m.
## 3         MX001 Abarrotes  7.501000e+12  NA 6/19/2020 08:24:33 a. m.
## 4         MX001 Abarrotes  7.501031e+12  NA 6/19/2020 08:24:33 a. m.
## 5         MX001 Abarrotes  7.501026e+12  NA 6/19/2020 08:26:28 a. m.
## 6         MX001 Abarrotes  7.501021e+12  NA 6/19/2020 08:16:21 a. m.
## 7         MX001 Abarrotes  7.501032e+12  NA 6/19/2020 08:23:33 a. m.
##                        Marca                 Fabricante
## 1                NUTRI LECHE                    MEXILAC
## 2                     DAN UP           DANONE DE MEXICO
## 3                      BIMBO                GRUPO BIMBO
## 4                      PEPSI        PEPSI-COLA MEXICANA
## 5 BLANCA NIEVES (DETERGENTE) FABRICA DE JABON LA CORONA
## 6                NUTRI LECHE                    MEXILAC
## 7                     DAN UP           DANONE DE MEXICO
##                             Producto Precio Ult.Costo Unidades F.Ticket
## 1                Nutri Leche 1 Litro   16.0     12.31        1        1
## 2 DANUP STRAWBERRY P/BEBER 350GR NAL   14.0     14.00        1        2
## 3                Rebanadas Bimbo 2Pz    5.0      5.00        1        3
## 4                   Pepsi N.R. 400Ml    8.0      8.00        1        3
## 5      Detergente Blanca Nieves 500G   19.5     15.00        1        4
## 6                Nutri Leche 1 Litro   16.0     12.31        1        1
## 7 DANUP STRAWBERRY P/BEBER 350GR NAL   14.0     14.00        1        2
##   NombreDepartamento          NombreFamilia           NombreCategoria
## 1          Abarrotes Lacteos y Refrigerados                     Leche
## 2          Abarrotes Lacteos y Refrigerados                    Yogurt
## 3          Abarrotes         Pan y Tortilla     Pan Dulce Empaquetado
## 4          Abarrotes                Bebidas Refrescos Plástico (N.R.)
## 5          Abarrotes     Limpieza del Hogar                Lavandería
## 6          Abarrotes Lacteos y Refrigerados                     Leche
## 7          Abarrotes Lacteos y Refrigerados                    Yogurt
##       Estado Mts.2 Tipo.ubicación      Giro Hora.inicio Hora.cierre
## 1 Nuevo León    60        Esquina Abarrotes        8:00       22:00
## 2 Nuevo León    60        Esquina Abarrotes        8:00       22:00
## 3 Nuevo León    60        Esquina Abarrotes        8:00       22:00
## 4 Nuevo León    60        Esquina Abarrotes        8:00       22:00
## 5 Nuevo León    60        Esquina Abarrotes        8:00       22:00
## 6 Nuevo León    60        Esquina Abarrotes        8:00       22:00
## 7 Nuevo León    60        Esquina Abarrotes        8:00       22:00
tail(bd)
##        vcClaveTienda DescGiro Codigo.Barras PLU      Fecha           Hora
## 200620         MX005 Depósito   7.62221e+12  NA  7/12/2020 01:08:25 a. m.
## 200621         MX005 Depósito   7.62221e+12  NA 10/23/2020 10:17:37 p. m.
## 200622         MX005 Depósito   7.62221e+12  NA 10/10/2020 08:30:20 p. m.
## 200623         MX005 Depósito   7.62221e+12  NA 10/10/2020 10:40:43 p. m.
## 200624         MX005 Depósito   7.62221e+12  NA  6/27/2020 10:30:19 p. m.
## 200625         MX005 Depósito   7.62221e+12  NA  6/26/2020 11:43:34 p. m.
##                    Marca    Fabricante                          Producto Precio
## 200620 TRIDENT XTRA CARE CADBURY ADAMS Trident Xtracare Freshmint 16.32G      9
## 200621 TRIDENT XTRA CARE CADBURY ADAMS Trident Xtracare Freshmint 16.32G      9
## 200622 TRIDENT XTRA CARE CADBURY ADAMS Trident Xtracare Freshmint 16.32G      9
## 200623 TRIDENT XTRA CARE CADBURY ADAMS Trident Xtracare Freshmint 16.32G      9
## 200624 TRIDENT XTRA CARE CADBURY ADAMS Trident Xtracare Freshmint 16.32G      9
## 200625 TRIDENT XTRA CARE CADBURY ADAMS Trident Xtracare Freshmint 16.32G      9
##        Ult.Costo Unidades F.Ticket NombreDepartamento NombreFamilia
## 200620      6.92        1   103100          Abarrotes      Dulcería
## 200621      6.92        1   116598          Abarrotes      Dulcería
## 200622      6.92        1   114886          Abarrotes      Dulcería
## 200623      6.92        1   114955          Abarrotes      Dulcería
## 200624      6.92        1   101121          Abarrotes      Dulcería
## 200625      6.92        1   100879          Abarrotes      Dulcería
##        NombreCategoria       Estado Mts.2 Tipo.ubicación       Giro Hora.inicio
## 200620 Gomas de Mazcar Quintana Roo    58        Esquina Mini súper        8:00
## 200621 Gomas de Mazcar Quintana Roo    58        Esquina Mini súper        8:00
## 200622 Gomas de Mazcar Quintana Roo    58        Esquina Mini súper        8:00
## 200623 Gomas de Mazcar Quintana Roo    58        Esquina Mini súper        8:00
## 200624 Gomas de Mazcar Quintana Roo    58        Esquina Mini súper        8:00
## 200625 Gomas de Mazcar Quintana Roo    58        Esquina Mini súper        8:00
##        Hora.cierre
## 200620       21:00
## 200621       21:00
## 200622       21:00
## 200623       21:00
## 200624       21:00
## 200625       21:00
#install.packages("janitor")
library(janitor)
## 
## Attaching package: 'janitor'
## 
## The following objects are masked from 'package:stats':
## 
##     chisq.test, fisher.test
tabyl(bd,vcClaveTienda,NombreDepartamento)
##  vcClaveTienda Abarrotes Bebes e Infantiles Carnes Farmacia Ferretería Mercería
##          MX001     95415                515      1      147        245       28
##          MX002      6590                 21      0        4         10        0
##          MX003      4026                 15      0        2          8        0
##          MX004     82234                932      0      102        114       16
##          MX005     10014                  0      0        0          0        0
##  Papelería Productos a Eliminar Vinos y Licores
##         35                    3              80
##          0                    0               4
##          0                    0               0
##         32                    5              20
##          7                    0               0

Observaciones

1. Casi ningun regreitro cuenta con PLU

2. Cambiar formato de fecha

3. Cambiar formato de hora

4. Hay precios negtvios.

5. Hay unidades menores a 1

Tecnicas para limpieza de datos

Tecnica 1. Remover valores irrelevantes

Eliminar columnas

bd1 <- bd
bd1 <- subset(bd1, select = -c (PLU, Codigo.Barras))

Eliminar renglones

bd2 <- bd1
bd2 <- bd2[bd2$Precio>0,]  
summary (bd1)  
##  vcClaveTienda        DescGiro            Fecha               Hora          
##  Length:200625      Length:200625      Length:200625      Length:200625     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
##                                                                             
##     Marca            Fabricante          Producto             Precio       
##  Length:200625      Length:200625      Length:200625      Min.   :-147.00  
##  Class :character   Class :character   Class :character   1st Qu.:  11.00  
##  Mode  :character   Mode  :character   Mode  :character   Median :  16.00  
##                                                           Mean   :  19.42  
##                                                           3rd Qu.:  25.00  
##                                                           Max.   :1000.00  
##    Ult.Costo         Unidades         F.Ticket      NombreDepartamento
##  Min.   :  0.38   Min.   : 0.200   Min.   :     1   Length:200625     
##  1st Qu.:  8.46   1st Qu.: 1.000   1st Qu.: 33964   Class :character  
##  Median : 12.31   Median : 1.000   Median :105993   Mode  :character  
##  Mean   : 15.31   Mean   : 1.262   Mean   :193990                     
##  3rd Qu.: 19.23   3rd Qu.: 1.000   3rd Qu.:383005                     
##  Max.   :769.23   Max.   :96.000   Max.   :450040                     
##  NombreFamilia      NombreCategoria       Estado              Mts.2     
##  Length:200625      Length:200625      Length:200625      Min.   :47.0  
##  Class :character   Class :character   Class :character   1st Qu.:53.0  
##  Mode  :character   Mode  :character   Mode  :character   Median :60.0  
##                                                           Mean   :56.6  
##                                                           3rd Qu.:60.0  
##                                                           Max.   :62.0  
##  Tipo.ubicación         Giro           Hora.inicio        Hora.cierre       
##  Length:200625      Length:200625      Length:200625      Length:200625     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
## 
summary (bd2)  
##  vcClaveTienda        DescGiro            Fecha               Hora          
##  Length:200478      Length:200478      Length:200478      Length:200478     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
##                                                                             
##     Marca            Fabricante          Producto             Precio       
##  Length:200478      Length:200478      Length:200478      Min.   :   0.50  
##  Class :character   Class :character   Class :character   1st Qu.:  11.00  
##  Mode  :character   Mode  :character   Mode  :character   Median :  16.00  
##                                                           Mean   :  19.45  
##                                                           3rd Qu.:  25.00  
##                                                           Max.   :1000.00  
##    Ult.Costo         Unidades         F.Ticket      NombreDepartamento
##  Min.   :  0.38   Min.   : 0.200   Min.   :     1   Length:200478     
##  1st Qu.:  8.46   1st Qu.: 1.000   1st Qu.: 33977   Class :character  
##  Median : 12.31   Median : 1.000   Median :106034   Mode  :character  
##  Mean   : 15.31   Mean   : 1.261   Mean   :194096                     
##  3rd Qu.: 19.23   3rd Qu.: 1.000   3rd Qu.:383062                     
##  Max.   :769.23   Max.   :96.000   Max.   :450040                     
##  NombreFamilia      NombreCategoria       Estado              Mts.2     
##  Length:200478      Length:200478      Length:200478      Min.   :47.0  
##  Class :character   Class :character   Class :character   1st Qu.:53.0  
##  Mode  :character   Mode  :character   Mode  :character   Median :60.0  
##                                                           Mean   :56.6  
##                                                           3rd Qu.:60.0  
##                                                           Max.   :62.0  
##  Tipo.ubicación         Giro           Hora.inicio        Hora.cierre       
##  Length:200478      Length:200478      Length:200478      Length:200478     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
## 

Esto no lo usaremos, pondremos precios negativos como absolutos

Tecnica 2. Remover valores duplicados

Cuantos renglones duplicados tenemos?

#bd1[duplicated(bd1)]
#sum(duplicated(bd1))  

Eliminar renglones duplicados

#bd3 <- bd1
#library(dplyr)  
#bd3 <- distinct(bd3) 

Tecnica 3. Errores tipograficos y errores similares

Precios en absoluto

bd4 <- bd3
bd4$Precio <- abs(bd4$Precio)  
summary(bd4) 
##  vcClaveTienda        DescGiro            Fecha               Hora          
##  Length:200620      Length:200620      Length:200620      Length:200620     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
##                                                                             
##     Marca            Fabricante          Producto             Precio       
##  Length:200620      Length:200620      Length:200620      Min.   :   0.50  
##  Class :character   Class :character   Class :character   1st Qu.:  11.00  
##  Mode  :character   Mode  :character   Mode  :character   Median :  16.00  
##                                                           Mean   :  19.45  
##                                                           3rd Qu.:  25.00  
##                                                           Max.   :1000.00  
##    Ult.Costo         Unidades         F.Ticket      NombreDepartamento
##  Min.   :  0.38   Min.   : 0.200   Min.   :     1   Length:200620     
##  1st Qu.:  8.46   1st Qu.: 1.000   1st Qu.: 33967   Class :character  
##  Median : 12.31   Median : 1.000   Median :105996   Mode  :character  
##  Mean   : 15.31   Mean   : 1.262   Mean   :193994                     
##  3rd Qu.: 19.23   3rd Qu.: 1.000   3rd Qu.:383008                     
##  Max.   :769.23   Max.   :96.000   Max.   :450040                     
##  NombreFamilia      NombreCategoria       Estado              Mts.2     
##  Length:200620      Length:200620      Length:200620      Min.   :47.0  
##  Class :character   Class :character   Class :character   1st Qu.:53.0  
##  Mode  :character   Mode  :character   Mode  :character   Median :60.0  
##                                                           Mean   :56.6  
##                                                           3rd Qu.:60.0  
##                                                           Max.   :62.0  
##  Tipo.ubicación         Giro           Hora.inicio        Hora.cierre       
##  Length:200620      Length:200620      Length:200620      Length:200620     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
## 

Cantidades de entero

bd5 <- bd4
bd5$Unidades <- ceiling(bd5$Unidades)
summary(bd5)  
##  vcClaveTienda        DescGiro            Fecha               Hora          
##  Length:200620      Length:200620      Length:200620      Length:200620     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
##                                                                             
##     Marca            Fabricante          Producto             Precio       
##  Length:200620      Length:200620      Length:200620      Min.   :   0.50  
##  Class :character   Class :character   Class :character   1st Qu.:  11.00  
##  Mode  :character   Mode  :character   Mode  :character   Median :  16.00  
##                                                           Mean   :  19.45  
##                                                           3rd Qu.:  25.00  
##                                                           Max.   :1000.00  
##    Ult.Costo         Unidades         F.Ticket      NombreDepartamento
##  Min.   :  0.38   Min.   : 1.000   Min.   :     1   Length:200620     
##  1st Qu.:  8.46   1st Qu.: 1.000   1st Qu.: 33967   Class :character  
##  Median : 12.31   Median : 1.000   Median :105996   Mode  :character  
##  Mean   : 15.31   Mean   : 1.262   Mean   :193994                     
##  3rd Qu.: 19.23   3rd Qu.: 1.000   3rd Qu.:383008                     
##  Max.   :769.23   Max.   :96.000   Max.   :450040                     
##  NombreFamilia      NombreCategoria       Estado              Mts.2     
##  Length:200620      Length:200620      Length:200620      Min.   :47.0  
##  Class :character   Class :character   Class :character   1st Qu.:53.0  
##  Mode  :character   Mode  :character   Mode  :character   Median :60.0  
##                                                           Mean   :56.6  
##                                                           3rd Qu.:60.0  
##                                                           Max.   :62.0  
##  Tipo.ubicación         Giro           Hora.inicio        Hora.cierre       
##  Length:200620      Length:200620      Length:200620      Length:200620     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
## 

Tecnica 4. Convertir tipos de datos

Convertir de caracter a fecha

bd6 <- bd5
bd6$Fecha <- as.Date(bd6$Fecha, format = "%m/%d/%Y")  
tibble(bd6)
## # A tibble: 200,620 × 20
##    vcCla…¹ DescG…² Fecha      Hora  Marca Fabri…³ Produ…⁴ Precio Ult.C…⁵ Unida…⁶
##    <chr>   <chr>   <date>     <chr> <chr> <chr>   <chr>    <dbl>   <dbl>   <dbl>
##  1 MX001   Abarro… 2020-06-19 08:1… NUTR… MEXILAC Nutri …   16     12.3        1
##  2 MX001   Abarro… 2020-06-19 08:2… DAN … DANONE… DANUP …   14     14          1
##  3 MX001   Abarro… 2020-06-19 08:2… BIMBO GRUPO … Rebana…    5      5          1
##  4 MX001   Abarro… 2020-06-19 08:2… PEPSI PEPSI-… Pepsi …    8      8          1
##  5 MX001   Abarro… 2020-06-19 08:2… BLAN… FABRIC… Deterg…   19.5   15          1
##  6 MX001   Abarro… 2020-06-19 08:2… FLASH ALEN    Flash …    9.5    7.31       1
##  7 MX001   Abarro… 2020-06-19 08:2… VARI… DANONE… Danone…   11     11          1
##  8 MX001   Abarro… 2020-06-19 08:2… ZOTE  FABRIC… Jabon …    9.5    7.31       1
##  9 MX001   Abarro… 2020-06-19 08:2… ALWA… PROCTE… T Feme…   23.5   18.1        1
## 10 MX001   Abarro… 2020-06-19 03:2… JUMEX JUMEX   Jugo D…   12     12          1
## # … with 200,610 more rows, 10 more variables: F.Ticket <int>,
## #   NombreDepartamento <chr>, NombreFamilia <chr>, NombreCategoria <chr>,
## #   Estado <chr>, Mts.2 <int>, Tipo.ubicación <chr>, Giro <chr>,
## #   Hora.inicio <chr>, Hora.cierre <chr>, and abbreviated variable names
## #   ¹​vcClaveTienda, ²​DescGiro, ³​Fabricante, ⁴​Producto, ⁵​Ult.Costo, ⁶​Unidades

Convertir de caracter a entero

bd7 <- bd6
bd7$Hora <- substr(bd7$Hora, start = 1, stop = 2)
tibble(bd7)  
## # A tibble: 200,620 × 20
##    vcCla…¹ DescG…² Fecha      Hora  Marca Fabri…³ Produ…⁴ Precio Ult.C…⁵ Unida…⁶
##    <chr>   <chr>   <date>     <chr> <chr> <chr>   <chr>    <dbl>   <dbl>   <dbl>
##  1 MX001   Abarro… 2020-06-19 08    NUTR… MEXILAC Nutri …   16     12.3        1
##  2 MX001   Abarro… 2020-06-19 08    DAN … DANONE… DANUP …   14     14          1
##  3 MX001   Abarro… 2020-06-19 08    BIMBO GRUPO … Rebana…    5      5          1
##  4 MX001   Abarro… 2020-06-19 08    PEPSI PEPSI-… Pepsi …    8      8          1
##  5 MX001   Abarro… 2020-06-19 08    BLAN… FABRIC… Deterg…   19.5   15          1
##  6 MX001   Abarro… 2020-06-19 08    FLASH ALEN    Flash …    9.5    7.31       1
##  7 MX001   Abarro… 2020-06-19 08    VARI… DANONE… Danone…   11     11          1
##  8 MX001   Abarro… 2020-06-19 08    ZOTE  FABRIC… Jabon …    9.5    7.31       1
##  9 MX001   Abarro… 2020-06-19 08    ALWA… PROCTE… T Feme…   23.5   18.1        1
## 10 MX001   Abarro… 2020-06-19 03    JUMEX JUMEX   Jugo D…   12     12          1
## # … with 200,610 more rows, 10 more variables: F.Ticket <int>,
## #   NombreDepartamento <chr>, NombreFamilia <chr>, NombreCategoria <chr>,
## #   Estado <chr>, Mts.2 <int>, Tipo.ubicación <chr>, Giro <chr>,
## #   Hora.inicio <chr>, Hora.cierre <chr>, and abbreviated variable names
## #   ¹​vcClaveTienda, ²​DescGiro, ³​Fabricante, ⁴​Producto, ⁵​Ult.Costo, ⁶​Unidades
bd7$Hora <- as.integer(bd7$Hora)
str(bd7) 
## 'data.frame':    200620 obs. of  20 variables:
##  $ vcClaveTienda     : chr  "MX001" "MX001" "MX001" "MX001" ...
##  $ DescGiro          : chr  "Abarrotes" "Abarrotes" "Abarrotes" "Abarrotes" ...
##  $ Fecha             : Date, format: "2020-06-19" "2020-06-19" ...
##  $ Hora              : int  8 8 8 8 8 8 8 8 8 3 ...
##  $ Marca             : chr  "NUTRI LECHE" "DAN UP" "BIMBO" "PEPSI" ...
##  $ Fabricante        : chr  "MEXILAC" "DANONE DE MEXICO" "GRUPO BIMBO" "PEPSI-COLA MEXICANA" ...
##  $ Producto          : chr  "Nutri Leche 1 Litro" "DANUP STRAWBERRY P/BEBER 350GR NAL" "Rebanadas Bimbo 2Pz" "Pepsi N.R. 400Ml" ...
##  $ Precio            : num  16 14 5 8 19.5 9.5 11 9.5 23.5 12 ...
##  $ Ult.Costo         : num  12.3 14 5 8 15 ...
##  $ Unidades          : num  1 1 1 1 1 1 1 1 1 1 ...
##  $ F.Ticket          : int  1 2 3 3 4 4 4 4 4 5 ...
##  $ NombreDepartamento: chr  "Abarrotes" "Abarrotes" "Abarrotes" "Abarrotes" ...
##  $ NombreFamilia     : chr  "Lacteos y Refrigerados" "Lacteos y Refrigerados" "Pan y Tortilla" "Bebidas" ...
##  $ NombreCategoria   : chr  "Leche" "Yogurt" "Pan Dulce Empaquetado" "Refrescos Plástico (N.R.)" ...
##  $ Estado            : chr  "Nuevo León" "Nuevo León" "Nuevo León" "Nuevo León" ...
##  $ Mts.2             : int  60 60 60 60 60 60 60 60 60 60 ...
##  $ Tipo.ubicación    : chr  "Esquina" "Esquina" "Esquina" "Esquina" ...
##  $ Giro              : chr  "Abarrotes" "Abarrotes" "Abarrotes" "Abarrotes" ...
##  $ Hora.inicio       : chr  "8:00" "8:00" "8:00" "8:00" ...
##  $ Hora.cierre       : chr  "22:00" "22:00" "22:00" "22:00" ...

Tecnica 5. Valores faltantes

Cuantos NA tengo en la base de datos?

sum(is.na(bd7))
## [1] 0
sum(is.na(bd)) 
## [1] 199188

?Cuantos NA tengo por columna?

sapply(bd7, function(x) sum(is.na(x)))
##      vcClaveTienda           DescGiro              Fecha               Hora 
##                  0                  0                  0                  0 
##              Marca         Fabricante           Producto             Precio 
##                  0                  0                  0                  0 
##          Ult.Costo           Unidades           F.Ticket NombreDepartamento 
##                  0                  0                  0                  0 
##      NombreFamilia    NombreCategoria             Estado              Mts.2 
##                  0                  0                  0                  0 
##     Tipo.ubicación               Giro        Hora.inicio        Hora.cierre 
##                  0                  0                  0                  0
sapply(bd, function(x) sum(is.na(x)))
##      vcClaveTienda           DescGiro      Codigo.Barras                PLU 
##                  0                  0                  0             199188 
##              Fecha               Hora              Marca         Fabricante 
##                  0                  0                  0                  0 
##           Producto             Precio          Ult.Costo           Unidades 
##                  0                  0                  0                  0 
##           F.Ticket NombreDepartamento      NombreFamilia    NombreCategoria 
##                  0                  0                  0                  0 
##             Estado              Mts.2     Tipo.ubicación               Giro 
##                  0                  0                  0                  0 
##        Hora.inicio        Hora.cierre 
##                  0                  0

Borrar todos los registros NA de una tabla

bd8 <- bd
bd8 <- na.omit(bd8)    
summary(bd8) 
##  vcClaveTienda        DescGiro         Codigo.Barras            PLU        
##  Length:1437        Length:1437        Min.   :6.750e+08   Min.   : 1.000  
##  Class :character   Class :character   1st Qu.:6.750e+08   1st Qu.: 1.000  
##  Mode  :character   Mode  :character   Median :6.750e+08   Median : 1.000  
##                                        Mean   :2.616e+11   Mean   : 2.112  
##                                        3rd Qu.:6.750e+08   3rd Qu.: 1.000  
##                                        Max.   :7.501e+12   Max.   :30.000  
##     Fecha               Hora              Marca            Fabricante       
##  Length:1437        Length:1437        Length:1437        Length:1437       
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
##                                                                             
##    Producto             Precio        Ult.Costo        Unidades    
##  Length:1437        Min.   :30.00   Min.   : 1.00   Min.   :1.000  
##  Class :character   1st Qu.:90.00   1st Qu.:64.62   1st Qu.:1.000  
##  Mode  :character   Median :90.00   Median :64.62   Median :1.000  
##                     Mean   :87.94   Mean   :56.65   Mean   :1.124  
##                     3rd Qu.:90.00   3rd Qu.:64.62   3rd Qu.:1.000  
##                     Max.   :90.00   Max.   :64.62   Max.   :7.000  
##     F.Ticket      NombreDepartamento NombreFamilia      NombreCategoria   
##  Min.   :   772   Length:1437        Length:1437        Length:1437       
##  1st Qu.: 99955   Class :character   Class :character   Class :character  
##  Median :102493   Mode  :character   Mode  :character   Mode  :character  
##  Mean   :100595                                                           
##  3rd Qu.:106546                                                           
##  Max.   :118356                                                           
##     Estado              Mts.2       Tipo.ubicación         Giro          
##  Length:1437        Min.   :58.00   Length:1437        Length:1437       
##  Class :character   1st Qu.:58.00   Class :character   Class :character  
##  Mode  :character   Median :58.00   Mode  :character   Mode  :character  
##                     Mean   :58.07                                        
##                     3rd Qu.:58.00                                        
##                     Max.   :60.00                                        
##  Hora.inicio        Hora.cierre       
##  Length:1437        Length:1437       
##  Class :character   Class :character  
##  Mode  :character   Mode  :character  
##                                       
##                                       
## 

Reemplazar NA con CEROS

bd9 <- bd
bd9[is.na(bd9)]<-0
summary(bd9)
##  vcClaveTienda        DescGiro         Codigo.Barras            PLU          
##  Length:200625      Length:200625      Min.   :8.347e+05   Min.   : 0.00000  
##  Class :character   Class :character   1st Qu.:7.501e+12   1st Qu.: 0.00000  
##  Mode  :character   Mode  :character   Median :7.501e+12   Median : 0.00000  
##                                        Mean   :5.950e+12   Mean   : 0.01513  
##                                        3rd Qu.:7.501e+12   3rd Qu.: 0.00000  
##                                        Max.   :1.750e+13   Max.   :30.00000  
##     Fecha               Hora              Marca            Fabricante       
##  Length:200625      Length:200625      Length:200625      Length:200625     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
##                                                                             
##    Producto             Precio          Ult.Costo         Unidades     
##  Length:200625      Min.   :-147.00   Min.   :  0.38   Min.   : 0.200  
##  Class :character   1st Qu.:  11.00   1st Qu.:  8.46   1st Qu.: 1.000  
##  Mode  :character   Median :  16.00   Median : 12.31   Median : 1.000  
##                     Mean   :  19.42   Mean   : 15.31   Mean   : 1.262  
##                     3rd Qu.:  25.00   3rd Qu.: 19.23   3rd Qu.: 1.000  
##                     Max.   :1000.00   Max.   :769.23   Max.   :96.000  
##     F.Ticket      NombreDepartamento NombreFamilia      NombreCategoria   
##  Min.   :     1   Length:200625      Length:200625      Length:200625     
##  1st Qu.: 33964   Class :character   Class :character   Class :character  
##  Median :105993   Mode  :character   Mode  :character   Mode  :character  
##  Mean   :193990                                                           
##  3rd Qu.:383005                                                           
##  Max.   :450040                                                           
##     Estado              Mts.2      Tipo.ubicación         Giro          
##  Length:200625      Min.   :47.0   Length:200625      Length:200625     
##  Class :character   1st Qu.:53.0   Class :character   Class :character  
##  Mode  :character   Median :60.0   Mode  :character   Mode  :character  
##                     Mean   :56.6                                        
##                     3rd Qu.:60.0                                        
##                     Max.   :62.0                                        
##  Hora.inicio        Hora.cierre       
##  Length:200625      Length:200625     
##  Class :character   Class :character  
##  Mode  :character   Mode  :character  
##                                       
##                                       
## 

Reemplazar NA con el promedio

bd10 <- bd
bd10$PLU[is.na(bd$PLU)]<-mean(bd10$PLU, na.rm = TRUE)
summary (bd10)  
##  vcClaveTienda        DescGiro         Codigo.Barras            PLU        
##  Length:200625      Length:200625      Min.   :8.347e+05   Min.   : 1.000  
##  Class :character   Class :character   1st Qu.:7.501e+12   1st Qu.: 2.112  
##  Mode  :character   Mode  :character   Median :7.501e+12   Median : 2.112  
##                                        Mean   :5.950e+12   Mean   : 2.112  
##                                        3rd Qu.:7.501e+12   3rd Qu.: 2.112  
##                                        Max.   :1.750e+13   Max.   :30.000  
##     Fecha               Hora              Marca            Fabricante       
##  Length:200625      Length:200625      Length:200625      Length:200625     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
##                                                                             
##    Producto             Precio          Ult.Costo         Unidades     
##  Length:200625      Min.   :-147.00   Min.   :  0.38   Min.   : 0.200  
##  Class :character   1st Qu.:  11.00   1st Qu.:  8.46   1st Qu.: 1.000  
##  Mode  :character   Median :  16.00   Median : 12.31   Median : 1.000  
##                     Mean   :  19.42   Mean   : 15.31   Mean   : 1.262  
##                     3rd Qu.:  25.00   3rd Qu.: 19.23   3rd Qu.: 1.000  
##                     Max.   :1000.00   Max.   :769.23   Max.   :96.000  
##     F.Ticket      NombreDepartamento NombreFamilia      NombreCategoria   
##  Min.   :     1   Length:200625      Length:200625      Length:200625     
##  1st Qu.: 33964   Class :character   Class :character   Class :character  
##  Median :105993   Mode  :character   Mode  :character   Mode  :character  
##  Mean   :193990                                                           
##  3rd Qu.:383005                                                           
##  Max.   :450040                                                           
##     Estado              Mts.2      Tipo.ubicación         Giro          
##  Length:200625      Min.   :47.0   Length:200625      Length:200625     
##  Class :character   1st Qu.:53.0   Class :character   Class :character  
##  Mode  :character   Median :60.0   Mode  :character   Mode  :character  
##                     Mean   :56.6                                        
##                     3rd Qu.:60.0                                        
##                     Max.   :62.0                                        
##  Hora.inicio        Hora.cierre       
##  Length:200625      Length:200625     
##  Class :character   Class :character  
##  Mode  :character   Mode  :character  
##                                       
##                                       
## 

Reemplazar negativos con cero

bd11 <- bd
bd11[bd11<0]<-0
summary (bd11)  
##  vcClaveTienda        DescGiro         Codigo.Barras            PLU        
##  Length:200625      Length:200625      Min.   :8.347e+05   Min.   : 1.00   
##  Class :character   Class :character   1st Qu.:7.501e+12   1st Qu.: 1.00   
##  Mode  :character   Mode  :character   Median :7.501e+12   Median : 1.00   
##                                        Mean   :5.950e+12   Mean   : 2.11   
##                                        3rd Qu.:7.501e+12   3rd Qu.: 1.00   
##                                        Max.   :1.750e+13   Max.   :30.00   
##                                                            NA's   :199188  
##     Fecha               Hora              Marca            Fabricante       
##  Length:200625      Length:200625      Length:200625      Length:200625     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
##                                                                             
##                                                                             
##    Producto             Precio          Ult.Costo         Unidades     
##  Length:200625      Min.   :   0.00   Min.   :  0.38   Min.   : 0.200  
##  Class :character   1st Qu.:  11.00   1st Qu.:  8.46   1st Qu.: 1.000  
##  Mode  :character   Median :  16.00   Median : 12.31   Median : 1.000  
##                     Mean   :  19.44   Mean   : 15.31   Mean   : 1.262  
##                     3rd Qu.:  25.00   3rd Qu.: 19.23   3rd Qu.: 1.000  
##                     Max.   :1000.00   Max.   :769.23   Max.   :96.000  
##                                                                        
##     F.Ticket      NombreDepartamento NombreFamilia      NombreCategoria   
##  Min.   :     1   Length:200625      Length:200625      Length:200625     
##  1st Qu.: 33964   Class :character   Class :character   Class :character  
##  Median :105993   Mode  :character   Mode  :character   Mode  :character  
##  Mean   :193990                                                           
##  3rd Qu.:383005                                                           
##  Max.   :450040                                                           
##                                                                           
##     Estado              Mts.2      Tipo.ubicación         Giro          
##  Length:200625      Min.   :47.0   Length:200625      Length:200625     
##  Class :character   1st Qu.:53.0   Class :character   Class :character  
##  Mode  :character   Median :60.0   Mode  :character   Mode  :character  
##                     Mean   :56.6                                        
##                     3rd Qu.:60.0                                        
##                     Max.   :62.0                                        
##                                                                         
##  Hora.inicio        Hora.cierre       
##  Length:200625      Length:200625     
##  Class :character   Class :character  
##  Mode  :character   Mode  :character  
##                                       
##                                       
##                                       
## 

Tecnica 6. Metodo estadistico

bd12<- bd7
boxplot(bd12$Precio, horizontal = TRUE)  

boxplot(bd12$Unidades, horizontal = TRUE)

Agregar columnas

#install.packages("lubridate")
library(lubridate)  
## 
## Attaching package: 'lubridate'
## The following objects are masked from 'package:base':
## 
##     date, intersect, setdiff, union
bd12$Dia_de_la_Semana <- wday(bd12$Fecha)  
summary(bd12)  
##  vcClaveTienda        DescGiro             Fecha                 Hora       
##  Length:200620      Length:200620      Min.   :2020-05-01   Min.   : 1.000  
##  Class :character   Class :character   1st Qu.:2020-06-06   1st Qu.: 5.000  
##  Mode  :character   Mode  :character   Median :2020-07-11   Median : 8.000  
##                                        Mean   :2020-07-18   Mean   : 7.299  
##                                        3rd Qu.:2020-08-29   3rd Qu.:10.000  
##                                        Max.   :2020-11-11   Max.   :12.000  
##     Marca            Fabricante          Producto             Precio       
##  Length:200620      Length:200620      Length:200620      Min.   :   0.50  
##  Class :character   Class :character   Class :character   1st Qu.:  11.00  
##  Mode  :character   Mode  :character   Mode  :character   Median :  16.00  
##                                                           Mean   :  19.45  
##                                                           3rd Qu.:  25.00  
##                                                           Max.   :1000.00  
##    Ult.Costo         Unidades         F.Ticket      NombreDepartamento
##  Min.   :  0.38   Min.   : 1.000   Min.   :     1   Length:200620     
##  1st Qu.:  8.46   1st Qu.: 1.000   1st Qu.: 33967   Class :character  
##  Median : 12.31   Median : 1.000   Median :105996   Mode  :character  
##  Mean   : 15.31   Mean   : 1.262   Mean   :193994                     
##  3rd Qu.: 19.23   3rd Qu.: 1.000   3rd Qu.:383008                     
##  Max.   :769.23   Max.   :96.000   Max.   :450040                     
##  NombreFamilia      NombreCategoria       Estado              Mts.2     
##  Length:200620      Length:200620      Length:200620      Min.   :47.0  
##  Class :character   Class :character   Class :character   1st Qu.:53.0  
##  Mode  :character   Mode  :character   Mode  :character   Median :60.0  
##                                                           Mean   :56.6  
##                                                           3rd Qu.:60.0  
##                                                           Max.   :62.0  
##  Tipo.ubicación         Giro           Hora.inicio        Hora.cierre       
##  Length:200620      Length:200620      Length:200620      Length:200620     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
##                                                                             
##  Dia_de_la_Semana
##  Min.   :1.000   
##  1st Qu.:2.000   
##  Median :4.000   
##  Mean   :3.912   
##  3rd Qu.:6.000   
##  Max.   :7.000
bd12$subtotal <- bd12$Precio * bd12$Unidades
summary (bd12)
##  vcClaveTienda        DescGiro             Fecha                 Hora       
##  Length:200620      Length:200620      Min.   :2020-05-01   Min.   : 1.000  
##  Class :character   Class :character   1st Qu.:2020-06-06   1st Qu.: 5.000  
##  Mode  :character   Mode  :character   Median :2020-07-11   Median : 8.000  
##                                        Mean   :2020-07-18   Mean   : 7.299  
##                                        3rd Qu.:2020-08-29   3rd Qu.:10.000  
##                                        Max.   :2020-11-11   Max.   :12.000  
##     Marca            Fabricante          Producto             Precio       
##  Length:200620      Length:200620      Length:200620      Min.   :   0.50  
##  Class :character   Class :character   Class :character   1st Qu.:  11.00  
##  Mode  :character   Mode  :character   Mode  :character   Median :  16.00  
##                                                           Mean   :  19.45  
##                                                           3rd Qu.:  25.00  
##                                                           Max.   :1000.00  
##    Ult.Costo         Unidades         F.Ticket      NombreDepartamento
##  Min.   :  0.38   Min.   : 1.000   Min.   :     1   Length:200620     
##  1st Qu.:  8.46   1st Qu.: 1.000   1st Qu.: 33967   Class :character  
##  Median : 12.31   Median : 1.000   Median :105996   Mode  :character  
##  Mean   : 15.31   Mean   : 1.262   Mean   :193994                     
##  3rd Qu.: 19.23   3rd Qu.: 1.000   3rd Qu.:383008                     
##  Max.   :769.23   Max.   :96.000   Max.   :450040                     
##  NombreFamilia      NombreCategoria       Estado              Mts.2     
##  Length:200620      Length:200620      Length:200620      Min.   :47.0  
##  Class :character   Class :character   Class :character   1st Qu.:53.0  
##  Mode  :character   Mode  :character   Mode  :character   Median :60.0  
##                                                           Mean   :56.6  
##                                                           3rd Qu.:60.0  
##                                                           Max.   :62.0  
##  Tipo.ubicación         Giro           Hora.inicio        Hora.cierre       
##  Length:200620      Length:200620      Length:200620      Length:200620     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
##                                                                             
##  Dia_de_la_Semana    subtotal      
##  Min.   :1.000    Min.   :   1.00  
##  1st Qu.:2.000    1st Qu.:  12.00  
##  Median :4.000    Median :  18.00  
##  Mean   :3.912    Mean   :  24.33  
##  3rd Qu.:6.000    3rd Qu.:  27.00  
##  Max.   :7.000    Max.   :2496.00
bd12$Utilidad <- bd12$Precio * bd12$Ult.Costo
summary (bd12)
##  vcClaveTienda        DescGiro             Fecha                 Hora       
##  Length:200620      Length:200620      Min.   :2020-05-01   Min.   : 1.000  
##  Class :character   Class :character   1st Qu.:2020-06-06   1st Qu.: 5.000  
##  Mode  :character   Mode  :character   Median :2020-07-11   Median : 8.000  
##                                        Mean   :2020-07-18   Mean   : 7.299  
##                                        3rd Qu.:2020-08-29   3rd Qu.:10.000  
##                                        Max.   :2020-11-11   Max.   :12.000  
##     Marca            Fabricante          Producto             Precio       
##  Length:200620      Length:200620      Length:200620      Min.   :   0.50  
##  Class :character   Class :character   Class :character   1st Qu.:  11.00  
##  Mode  :character   Mode  :character   Mode  :character   Median :  16.00  
##                                                           Mean   :  19.45  
##                                                           3rd Qu.:  25.00  
##                                                           Max.   :1000.00  
##    Ult.Costo         Unidades         F.Ticket      NombreDepartamento
##  Min.   :  0.38   Min.   : 1.000   Min.   :     1   Length:200620     
##  1st Qu.:  8.46   1st Qu.: 1.000   1st Qu.: 33967   Class :character  
##  Median : 12.31   Median : 1.000   Median :105996   Mode  :character  
##  Mean   : 15.31   Mean   : 1.262   Mean   :193994                     
##  3rd Qu.: 19.23   3rd Qu.: 1.000   3rd Qu.:383008                     
##  Max.   :769.23   Max.   :96.000   Max.   :450040                     
##  NombreFamilia      NombreCategoria       Estado              Mts.2     
##  Length:200620      Length:200620      Length:200620      Min.   :47.0  
##  Class :character   Class :character   Class :character   1st Qu.:53.0  
##  Mode  :character   Mode  :character   Mode  :character   Median :60.0  
##                                                           Mean   :56.6  
##                                                           3rd Qu.:60.0  
##                                                           Max.   :62.0  
##  Tipo.ubicación         Giro           Hora.inicio        Hora.cierre       
##  Length:200620      Length:200620      Length:200620      Length:200620     
##  Class :character   Class :character   Class :character   Class :character  
##  Mode  :character   Mode  :character   Mode  :character   Mode  :character  
##                                                                             
##                                                                             
##                                                                             
##  Dia_de_la_Semana    subtotal          Utilidad       
##  Min.   :1.000    Min.   :   1.00   Min.   :     0.2  
##  1st Qu.:2.000    1st Qu.:  12.00   1st Qu.:    93.1  
##  Median :4.000    Median :  18.00   Median :   197.0  
##  Mean   :3.912    Mean   :  24.33   Mean   :   459.6  
##  3rd Qu.:6.000    3rd Qu.:  27.00   3rd Qu.:   480.8  
##  Max.   :7.000    Max.   :2496.00   Max.   :769230.0

Exportar base de datos limpias

bd_limpia <- bd12
write.csv (bd_limpia, file="abarrotes_bd_limpia.csv", row.names= FALSE)

Market Basket Analysis

#install.packages("plyr")
library(Matrix) 
## 
## Attaching package: 'Matrix'
## The following objects are masked from 'package:tidyr':
## 
##     expand, pack, unpack
#install.packages("arules")
library(arules) 
## 
## Attaching package: 'arules'
## The following object is masked from 'package:dplyr':
## 
##     recode
## The following objects are masked from 'package:base':
## 
##     abbreviate, write
#install.packages("arulesViz")
library(arulesViz)  
library(datasets) 
#install.packages("plyr")
library(Matrix) 
#install.packages("arules")
library(arules) 
#install.packages("arulesViz")
library(arulesViz)  
library(datasets) 

Ordenar de menor a mayor los tickets

bd_limpia <- bd_limpia[order(bd_limpia$F.Ticket),]
head(bd_limpia)    
##   vcClaveTienda  DescGiro      Fecha Hora                      Marca
## 1         MX001 Abarrotes 2020-06-19    8                NUTRI LECHE
## 2         MX001 Abarrotes 2020-06-19    8                     DAN UP
## 3         MX001 Abarrotes 2020-06-19    8                      BIMBO
## 4         MX001 Abarrotes 2020-06-19    8                      PEPSI
## 5         MX001 Abarrotes 2020-06-19    8 BLANCA NIEVES (DETERGENTE)
## 6         MX001 Abarrotes 2020-06-19    8                      FLASH
##                   Fabricante                           Producto Precio
## 1                    MEXILAC                Nutri Leche 1 Litro   16.0
## 2           DANONE DE MEXICO DANUP STRAWBERRY P/BEBER 350GR NAL   14.0
## 3                GRUPO BIMBO                Rebanadas Bimbo 2Pz    5.0
## 4        PEPSI-COLA MEXICANA                   Pepsi N.R. 400Ml    8.0
## 5 FABRICA DE JABON LA CORONA      Detergente Blanca Nieves 500G   19.5
## 6                       ALEN      Flash Xtra Brisa Marina 500Ml    9.5
##   Ult.Costo Unidades F.Ticket NombreDepartamento          NombreFamilia
## 1     12.31        1        1          Abarrotes Lacteos y Refrigerados
## 2     14.00        1        2          Abarrotes Lacteos y Refrigerados
## 3      5.00        1        3          Abarrotes         Pan y Tortilla
## 4      8.00        1        3          Abarrotes                Bebidas
## 5     15.00        1        4          Abarrotes     Limpieza del Hogar
## 6      7.31        1        4          Abarrotes     Limpieza del Hogar
##             NombreCategoria     Estado Mts.2 Tipo.ubicación      Giro
## 1                     Leche Nuevo León    60        Esquina Abarrotes
## 2                    Yogurt Nuevo León    60        Esquina Abarrotes
## 3     Pan Dulce Empaquetado Nuevo León    60        Esquina Abarrotes
## 4 Refrescos Plástico (N.R.) Nuevo León    60        Esquina Abarrotes
## 5                Lavandería Nuevo León    60        Esquina Abarrotes
## 6      Limpiadores Líquidos Nuevo León    60        Esquina Abarrotes
##   Hora.inicio Hora.cierre Dia_de_la_Semana subtotal Utilidad
## 1        8:00       22:00                6     16.0  196.960
## 2        8:00       22:00                6     14.0  196.000
## 3        8:00       22:00                6      5.0   25.000
## 4        8:00       22:00                6      8.0   64.000
## 5        8:00       22:00                6     19.5  292.500
## 6        8:00       22:00                6      9.5   69.445
tail(bd_limpia) 
##        vcClaveTienda   DescGiro      Fecha Hora          Marca
## 107394         MX004 Carnicería 2020-10-15   11         YEMINA
## 167771         MX004 Carnicería 2020-10-15   11     DEL FUERTE
## 149429         MX004 Carnicería 2020-10-15   11 COCA COLA ZERO
## 168750         MX004 Carnicería 2020-10-15   11       DIAMANTE
## 161193         MX004 Carnicería 2020-10-15   12          PEPSI
## 112970         MX004 Carnicería 2020-10-15   12      COCA COLA
##                  Fabricante                       Producto Precio Ult.Costo
## 107394               HERDEZ    PASTA SPAGHETTI YEMINA 200G      7      5.38
## 167771 ALIMENTOS DEL FUERTE PURE DE TOMATE DEL FUERTE 345G     12      9.23
## 149429            COCA COLA           COCA COLA ZERO 600ML     15     11.54
## 168750           EMPACADOS              ARROZ DIAMANTE225G     11      8.46
## 161193  PEPSI-COLA MEXICANA              PEPSI N. R. 500ML     10      7.69
## 112970            COCA COLA     COCA COLA RETORNABLE 500ML     10      7.69
##        Unidades F.Ticket NombreDepartamento        NombreFamilia
## 107394        2   450032          Abarrotes       Sopas y Pastas
## 167771        1   450032          Abarrotes Salsas y Sazonadores
## 149429        2   450034          Abarrotes              Bebidas
## 168750        1   450037          Abarrotes    Granos y Semillas
## 161193        1   450039          Abarrotes              Bebidas
## 112970        8   450040          Abarrotes              Bebidas
##                      NombreCategoria  Estado Mts.2 Tipo.ubicación      Giro
## 107394 Fideos, Spaguetti, Tallarines Sinaloa    53        Esquina Abarrotes
## 167771          Salsa para Spaguetti Sinaloa    53        Esquina Abarrotes
## 149429         Refrescos Retornables Sinaloa    53        Esquina Abarrotes
## 168750                         Arroz Sinaloa    53        Esquina Abarrotes
## 161193     Refrescos Plástico (N.R.) Sinaloa    53        Esquina Abarrotes
## 112970         Refrescos Retornables Sinaloa    53        Esquina Abarrotes
##        Hora.inicio Hora.cierre Dia_de_la_Semana subtotal Utilidad
## 107394        7:00       23:00                5       14    37.66
## 167771        7:00       23:00                5       12   110.76
## 149429        7:00       23:00                5       30   173.10
## 168750        7:00       23:00                5       11    93.06
## 161193        7:00       23:00                5       10    76.90
## 112970        7:00       23:00                5       80    76.90

Generar basket

#install.packages("plyr")
library(plyr)
## ------------------------------------------------------------------------------
## You have loaded plyr after dplyr - this is likely to cause problems.
## If you need functions from both plyr and dplyr, please load plyr first, then dplyr:
## library(plyr); library(dplyr)
## ------------------------------------------------------------------------------
## 
## Attaching package: 'plyr'
## The following object is masked from 'package:purrr':
## 
##     compact
## The following objects are masked from 'package:dplyr':
## 
##     arrange, count, desc, failwith, id, mutate, rename, summarise,
##     summarize
basket <- ddply(bd_limpia,c("F.Ticket"), function(bd_limpia)paste(bd_limpia$Marca, collapse = ","))

Eliminar numero de ticket

basket$F.Ticket <- NULL

Renombramos el nombre de la columna

colnames(basket) <- c("Marca")

Exportar basket

write.csv(basket, "basket2.csv", quote = FALSE, row.names = FALSE)

Importar transacciones

#file.choose()
tr <- read.transactions ("/Users/andreapaolasosa/basket2.csv", format = "basket", sep = ",")
## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string

## Warning in scan(text = l, what = "character", sep = sep, quote = quote, : EOF
## within quoted string
## Warning in asMethod(object): removing duplicated items in transactions
reglas.asociaciones <- apriori(tr, parameter = list(supp=0.001, conf=0.2, maxlen=10))
## Apriori
## 
## Parameter specification:
##  confidence minval smax arem  aval originalSupport maxtime support minlen
##         0.2    0.1    1 none FALSE            TRUE       5   0.001      1
##  maxlen target  ext
##      10  rules TRUE
## 
## Algorithmic control:
##  filter tree heap memopt load sort verbose
##     0.1 TRUE TRUE  FALSE TRUE    2    TRUE
## 
## Absolute minimum support count: 115 
## 
## set item appearances ...[0 item(s)] done [0.00s].
## set transactions ...[604 item(s), 115111 transaction(s)] done [0.04s].
## sorting and recoding items ... [207 item(s)] done [0.00s].
## creating transaction tree ... done [0.06s].
## checking subsets of size 1 2 3 done [0.00s].
## writing ... [11 rule(s)] done [0.00s].
## creating S4 object  ... done [0.01s].
summary(reglas.asociaciones)  
## set of 11 rules
## 
## rule length distribution (lhs + rhs):sizes
##  2 
## 11 
## 
##    Min. 1st Qu.  Median    Mean 3rd Qu.    Max. 
##       2       2       2       2       2       2 
## 
## summary of quality measures:
##     support           confidence        coverage             lift       
##  Min.   :0.001016   Min.   :0.2069   Min.   :0.003562   Min.   : 1.325  
##  1st Qu.:0.001103   1st Qu.:0.2356   1st Qu.:0.004504   1st Qu.: 1.787  
##  Median :0.001416   Median :0.2442   Median :0.005803   Median : 3.972  
##  Mean   :0.001519   Mean   :0.2536   Mean   :0.006054   Mean   :17.563  
##  3rd Qu.:0.001651   3rd Qu.:0.2685   3rd Qu.:0.006893   3rd Qu.:21.798  
##  Max.   :0.002745   Max.   :0.3098   Max.   :0.010503   Max.   :65.908  
##      count      
##  Min.   :117.0  
##  1st Qu.:127.0  
##  Median :163.0  
##  Mean   :174.9  
##  3rd Qu.:190.0  
##  Max.   :316.0  
## 
## mining info:
##  data ntransactions support confidence
##    tr        115111   0.001        0.2
##                                                                         call
##  apriori(data = tr, parameter = list(supp = 0.001, conf = 0.2, maxlen = 10))
inspect(reglas.asociaciones)  
##      lhs                  rhs         support     confidence coverage   
## [1]  {FANTA}           => {COCA COLA} 0.001051159 0.2439516  0.004308884
## [2]  {SALVO}           => {FABULOSO}  0.001103283 0.3097561  0.003561779
## [3]  {FABULOSO}        => {SALVO}     0.001103283 0.2347505  0.004699811
## [4]  {COCA COLA ZERO}  => {COCA COLA} 0.001416025 0.2969035  0.004769310
## [5]  {SPRITE}          => {COCA COLA} 0.001346526 0.2069426  0.006506763
## [6]  {PINOL}           => {CLORALEX}  0.001016410 0.2363636  0.004300197
## [7]  {BLUE HOUSE}      => {BIMBO}     0.001711392 0.2720994  0.006289581
## [8]  {HELLMANN´S}      => {BIMBO}     0.001537646 0.2649701  0.005803094
## [9]  {REYMA}           => {CONVERMEX} 0.002093631 0.2441743  0.008574333
## [10] {FUD}             => {BIMBO}     0.001589770 0.2183771  0.007279930
## [11] {COCA COLA LIGHT} => {COCA COLA} 0.002745176 0.2613730  0.010502906
##      lift      count
## [1]   1.561906 121  
## [2]  65.908196 127  
## [3]  65.908196 127  
## [4]   1.900932 163  
## [5]   1.324955 155  
## [6]  25.030409 117  
## [7]   4.078870 197  
## [8]   3.971997 177  
## [9]  18.564824 241  
## [10]  3.273552 183  
## [11]  1.673447 316
reglas.asociaciones <- sort(reglas.asociaciones,by="confidence", decreasing = TRUE )
summary(reglas.asociaciones)  
## set of 11 rules
## 
## rule length distribution (lhs + rhs):sizes
##  2 
## 11 
## 
##    Min. 1st Qu.  Median    Mean 3rd Qu.    Max. 
##       2       2       2       2       2       2 
## 
## summary of quality measures:
##     support           confidence        coverage             lift       
##  Min.   :0.001016   Min.   :0.2069   Min.   :0.003562   Min.   : 1.325  
##  1st Qu.:0.001103   1st Qu.:0.2356   1st Qu.:0.004504   1st Qu.: 1.787  
##  Median :0.001416   Median :0.2442   Median :0.005803   Median : 3.972  
##  Mean   :0.001519   Mean   :0.2536   Mean   :0.006054   Mean   :17.563  
##  3rd Qu.:0.001651   3rd Qu.:0.2685   3rd Qu.:0.006893   3rd Qu.:21.798  
##  Max.   :0.002745   Max.   :0.3098   Max.   :0.010503   Max.   :65.908  
##      count      
##  Min.   :117.0  
##  1st Qu.:127.0  
##  Median :163.0  
##  Mean   :174.9  
##  3rd Qu.:190.0  
##  Max.   :316.0  
## 
## mining info:
##  data ntransactions support confidence
##    tr        115111   0.001        0.2
##                                                                         call
##  apriori(data = tr, parameter = list(supp = 0.001, conf = 0.2, maxlen = 10))
inspect(reglas.asociaciones)  
##      lhs                  rhs         support     confidence coverage   
## [1]  {SALVO}           => {FABULOSO}  0.001103283 0.3097561  0.003561779
## [2]  {COCA COLA ZERO}  => {COCA COLA} 0.001416025 0.2969035  0.004769310
## [3]  {BLUE HOUSE}      => {BIMBO}     0.001711392 0.2720994  0.006289581
## [4]  {HELLMANN´S}      => {BIMBO}     0.001537646 0.2649701  0.005803094
## [5]  {COCA COLA LIGHT} => {COCA COLA} 0.002745176 0.2613730  0.010502906
## [6]  {REYMA}           => {CONVERMEX} 0.002093631 0.2441743  0.008574333
## [7]  {FANTA}           => {COCA COLA} 0.001051159 0.2439516  0.004308884
## [8]  {PINOL}           => {CLORALEX}  0.001016410 0.2363636  0.004300197
## [9]  {FABULOSO}        => {SALVO}     0.001103283 0.2347505  0.004699811
## [10] {FUD}             => {BIMBO}     0.001589770 0.2183771  0.007279930
## [11] {SPRITE}          => {COCA COLA} 0.001346526 0.2069426  0.006506763
##      lift      count
## [1]  65.908196 127  
## [2]   1.900932 163  
## [3]   4.078870 197  
## [4]   3.971997 177  
## [5]   1.673447 316  
## [6]  18.564824 241  
## [7]   1.561906 121  
## [8]  25.030409 117  
## [9]  65.908196 127  
## [10]  3.273552 183  
## [11]  1.324955 155
top10reglas <- head(reglas.asociaciones, n =10, by="confidence")  
plot(top10reglas, method = "graph", engine = "htmlwidget")

Conclusion

A traves de este ejercicio se puede obervar si existe un patron entre los productos y la actividad del consumidor, esa es la principal funcion de realizar un market basket analysis. A raiz de esto la empresa puede tomar una decision de reubicar porductos en base a cuales son los mas solicitados y los que mas lllamen la atencion del cliente y posicionarlos de manera etsrategica conn el fin de aumentar sus venntas.

.

---
title: <span style="Color:Red"> Abarrotes Market Basket
author: "Andrea Paola Sosa A00827359"
date: "2022-10-04"
output:
    html_document:
      toc: true
      toc_float: true 
      code_download: true
---

<img src="/Users/andreapaolasosa/Desktop/abarrotesfoto.webp">

#### Herramienta "El generador de valor de datos"
**Paso 1.** definir el area del negocio que buscamos impactar o mejorar y su KPI
R: El area de negocio que se busca impactar es el departamento de ventas
**Paso 2.** seleccionar la plantilla (-s) para crear valor a partir de los datos de los clientes  
**Vision**  |Segmentacion | personalizacion | contextualizacion  
R: Se selecciono la plantilla de segmentacion
**Paso 3.** generar ideas o conceptos especificos  
Elaborar un market basket analysis para obtener informacion acerca de los clientes y sus patrones de compra 
**Paso 4.** reunir los datos requeridos  
Se reunen los datos necesarios para crear el market basket, en est ecaso informacion de los productos.
**Paso 5.** plan de ejecucion.  
El departamento de ventas y marketing podra tomar una decision en base a los reusltados obtenidos

##### A la base de datos se le hicieron los siguientes cambios:
##### Formato a fecha corta
##### Se duplicaon los primeros 5 registros
##### se le cambio el formato a hora (mexico)
##### Se cambio el formato de codigo de barras
##### se guardo como CSV UST-8

## Importar base de datos
```{r}
#file.choose()
bd <- read.csv ("/Users/andreapaolasosa/Desktop/abarrotes.csv")
```

## Entender la base de datos
```{r}
summary(bd)
```

## install.packages("dplyr")
```{r}
library(dplyr)
#count(bd, ?..vcClaveTienda, sort = TRUE)
#count(bd, DescGiro, sort = TRUE)
#count(bd, Marca, sort = TRUE)
#count(bd, Fabricante, sort = TRUE)
#count(bd, Producto, sort = TRUE)
#count(bd, NombreDepartamento, sort = TRUE)
#count(bd, NombreFamilia, sort = TRUE)
#count(bd, NombreCategoria, sort = TRUE)
#count(bd, Estado, sort = TRUE)
#count(bd, Mts.2, sort = TRUE)
#count(bd, Tipo.ubicación, sort = TRUE)
#count(bd, Giro, sort = TRUE)
#count(bd, Hora.inicio, sort = TRUE)
#count(bd, Hora.cierre, sort = TRUE)

#install.packages("tidyverse")
library(tidyverse)

tibble(bd)

str(bd)

head(bd)
head(bd, n=7)

tail(bd)

#install.packages("janitor")
library(janitor)

tabyl(bd,vcClaveTienda,NombreDepartamento)
```

## Observaciones
### 1. Casi ningun regreitro cuenta con PLU
### 2. Cambiar formato de fecha
### 3. Cambiar formato de hora
### 4. Hay precios negtvios.
### 5. Hay unidades menores a 1

# Tecnicas para limpieza de datos

## Tecnica 1. Remover valores irrelevantes
## Eliminar columnas
```{r}
bd1 <- bd
bd1 <- subset(bd1, select = -c (PLU, Codigo.Barras))
```

## Eliminar renglones
```{r}
bd2 <- bd1
bd2 <- bd2[bd2$Precio>0,]  
summary (bd1)  
summary (bd2)  
```

## Esto no lo usaremos, pondremos precios negativos como absolutos

### Tecnica 2. Remover valores duplicados
#### Cuantos renglones duplicados tenemos?
```{r, include=FALSE}
bd1[duplicated(bd1)]
sum(duplicated(bd1))  

```

```{r}
#bd1[duplicated(bd1)]
#sum(duplicated(bd1))  
```

## Eliminar renglones duplicados
```{r, include=FALSE}
bd3 <- bd1
library(dplyr)  
bd3 <- distinct(bd3)  
```

```{r}
#bd3 <- bd1
#library(dplyr)  
#bd3 <- distinct(bd3) 
```

## Tecnica 3. Errores tipograficos y errores similares

### Precios en absoluto
```{r}
bd4 <- bd3
bd4$Precio <- abs(bd4$Precio)  
summary(bd4) 
```

## Cantidades de entero
```{r}
bd5 <- bd4
bd5$Unidades <- ceiling(bd5$Unidades)
summary(bd5)  
```

## Tecnica 4. Convertir tipos de datos

### Convertir de caracter a fecha
```{r}
bd6 <- bd5
bd6$Fecha <- as.Date(bd6$Fecha, format = "%m/%d/%Y")  
tibble(bd6)
```

## Convertir de caracter a entero
```{r}
bd7 <- bd6
bd7$Hora <- substr(bd7$Hora, start = 1, stop = 2)
tibble(bd7)  
bd7$Hora <- as.integer(bd7$Hora)
str(bd7) 
```

## Tecnica 5. Valores faltantes

### Cuantos NA tengo en la base de datos?
```{r}
sum(is.na(bd7))
sum(is.na(bd)) 
```

## ?Cuantos NA tengo por columna?
```{r}
sapply(bd7, function(x) sum(is.na(x)))
sapply(bd, function(x) sum(is.na(x)))

```

## Borrar todos los registros NA de una tabla
```{r}
bd8 <- bd
bd8 <- na.omit(bd8)    
summary(bd8) 
```

## Reemplazar NA con CEROS 
```{r}
bd9 <- bd
bd9[is.na(bd9)]<-0
summary(bd9)
```

## Reemplazar NA con el promedio
```{r}
bd10 <- bd
bd10$PLU[is.na(bd$PLU)]<-mean(bd10$PLU, na.rm = TRUE)
summary (bd10)  
```

## Reemplazar negativos con cero
```{r}
bd11 <- bd
bd11[bd11<0]<-0
summary (bd11)  
```

## Tecnica 6. Metodo estadistico
```{r}
bd12<- bd7
boxplot(bd12$Precio, horizontal = TRUE)  
boxplot(bd12$Unidades, horizontal = TRUE)
```

## Agregar columnas
```{r}
#install.packages("lubridate")
library(lubridate)  
bd12$Dia_de_la_Semana <- wday(bd12$Fecha)  
summary(bd12)  

bd12$subtotal <- bd12$Precio * bd12$Unidades
summary (bd12)

bd12$Utilidad <- bd12$Precio * bd12$Ult.Costo
summary (bd12)
```

## Exportar base de datos limpias
```{r}
bd_limpia <- bd12
write.csv (bd_limpia, file="abarrotes_bd_limpia.csv", row.names= FALSE)
```

## Market Basket Analysis
```{r}
#install.packages("plyr")
library(Matrix) 
#install.packages("arules")
library(arules) 
#install.packages("arulesViz")
library(arulesViz)  
library(datasets) 
#install.packages("plyr")
library(Matrix) 
#install.packages("arules")
library(arules) 
#install.packages("arulesViz")
library(arulesViz)  
library(datasets) 
```


## Ordenar de menor a mayor los tickets
```{r}
bd_limpia <- bd_limpia[order(bd_limpia$F.Ticket),]
head(bd_limpia)    
tail(bd_limpia) 
```

## Generar basket
```{r}
#install.packages("plyr")
library(plyr)
basket <- ddply(bd_limpia,c("F.Ticket"), function(bd_limpia)paste(bd_limpia$Marca, collapse = ","))
```


## Eliminar numero de ticket
```{r}
basket$F.Ticket <- NULL
```

## Renombramos el nombre de la columna
```{r}
colnames(basket) <- c("Marca")
```

## Exportar basket
```{r}
write.csv(basket, "basket2.csv", quote = FALSE, row.names = FALSE)
```

##  Importar transacciones
```{r}
#file.choose()
tr <- read.transactions ("/Users/andreapaolasosa/basket2.csv", format = "basket", sep = ",")

reglas.asociaciones <- apriori(tr, parameter = list(supp=0.001, conf=0.2, maxlen=10))
summary(reglas.asociaciones)  
inspect(reglas.asociaciones)  

reglas.asociaciones <- sort(reglas.asociaciones,by="confidence", decreasing = TRUE )
summary(reglas.asociaciones)  
inspect(reglas.asociaciones)  

top10reglas <- head(reglas.asociaciones, n =10, by="confidence")  
plot(top10reglas, method = "graph", engine = "htmlwidget")
```


## Conclusion
A traves de este ejercicio se puede obervar si existe  un patron entre los productos y la actividad del consumidor, esa es la principal funcion de realizar un market basket analysis. A raiz de esto la empresa puede tomar una decision de reubicar porductos en base a cuales son los mas solicitados y los que mas lllamen la atencion del cliente y posicionarlos de manera etsrategica conn el fin de aumentar sus venntas.




.
