Casens 2006-2017 Tabla 52

Decil Ingreso Autónomo Nacional

VE-CC-AJ

DataIntelligence
date: 12-10-2021
casen_2006 <<- readRDS("C:/Users/enamo/Desktop/Shiny-R/Casen_en_pandemia_2020/casen/casen_2006_c.rds")
casen_2006 <- mutate_if(casen_2006, is.factor, as.character)
casen_2009 <<- readRDS("C:/Users/enamo/Desktop/Shiny-R/Casen_en_pandemia_2020/casen/casen_2009_c.rds")
casen_2009 <- mutate_if(casen_2009, is.factor, as.character)
casen_2011 <<- readRDS("C:/Users/enamo/Desktop/Shiny-R/Casen_en_pandemia_2020/casen/casen_2011_c.rds")
casen_2011 <- mutate_if(casen_2011, is.factor, as.character)
casen_2013 <<- readRDS("C:/Users/enamo/Desktop/Shiny-R/Casen_en_pandemia_2020/casen/casen_2013_c.rds")
casen_2013 <- mutate_if(casen_2013, is.factor, as.character)
casen_2015 <<- readRDS("C:/Users/enamo/Desktop/Shiny-R/Casen_en_pandemia_2020/casen/casen_2015_c.rds")
casen_2015 <- mutate_if(casen_2015, is.factor, as.character)
casen_2017 <<- readRDS("C:/Users/enamo/Desktop/Shiny-R/Casen_en_pandemia_2020/casen/casen_2017_c.rds")
casen_2017 <- mutate_if(casen_2017, is.factor, as.character)
casen_2020 <<- readRDS("C:/Users/enamo/Desktop/Shiny-R/Casen_en_pandemia_2020/casen/casen_2020_c.rds")
casen_2020 <- mutate_if(casen_2020, is.factor, as.character)

cod_com <- readRDS("C:/Users/enamo/Desktop/Shiny-R/Casen_en_pandemia_2020/codigos_comunales_2006-2020.rds") 
names(cod_com)[2] <- "comuna"
vv <- c("DAU","DAU","daut","DAU_MN","dau","dau") # <<<<<<------- cambiar variables

casen_2006 <- casen_2006[,c("EXPC", "COMUNA"          ,vv[1],            "T4","SEXO","E1")]
casen_2009 <- casen_2009[,c("EXPC", "COMUNA"          ,vv[2],            "T5","SEXO","E1")]
casen_2011 <- casen_2011[,c("expc_full", "comuna"     ,vv[3],            "r6","sexo","e1","r2p_cod")]
casen_2013 <- casen_2013[,c("expc", "comuna"          ,vv[4],            "r6","sexo","e1","r2_p_cod")]
casen_2015 <- casen_2015[,c("expc_todas", "comuna"    ,vv[5],            "r3","sexo","e1","r2espp_cod")]
casen_2017 <- casen_2017[,c("expc", "comuna"          ,vv[6],            "r3","sexo","e1","r2_p_cod")]
# casen_2020 <- casen_2020[,c("expc", "comuna"          ,vv[7],            "r3","sexo","e1","r2_pais_esp")]

Homologación de alfabetismo

casen_2006$E1[casen_2006$E1 == "No sabe /Sin dato"] <- NA
casen_2011$e1[casen_2011$e1 == "Sí, lee y escribe"] <- "Sí"
casen_2011$e1[casen_2011$e1 == "No, sólo lee"] <- "No"
casen_2011$e1[casen_2011$e1 == "No, ninguno"] <- "No"
casen_2011$e1[casen_2011$e1 == "No, sólo escribe"] <- "No"
casen_2013$e1[casen_2013$e1 == "Sí, lee y escribe"] <- "Sí"
casen_2013$e1[casen_2013$e1 == "No, ninguno"] <- "No"
casen_2013$e1[casen_2013$e1 == "No, sólo lee"] <- "No"
casen_2013$e1[casen_2013$e1 == "No, sólo escribe"] <- "No"
casen_2013$e1[casen_2013$e1 == "NS/NR"] <- NA
casen_2015$e1[casen_2015$e1 == "Sí, lee y escribe"] <- "Sí"
casen_2015$e1[casen_2015$e1 == "No, ninguno"] <- "No"
casen_2015$e1[casen_2015$e1 == "No, sólo lee"] <- "No"
casen_2015$e1[casen_2015$e1 == "No, sólo escribe"] <- "No"
casen_2017$e1[casen_2017$e1 == "Sí, lee y escribe"] <- "Sí"
casen_2017$e1[casen_2017$e1 == "No, sólo lee"] <- "No"
casen_2017$e1[casen_2017$e1 == "No, ninguno"] <- "No"
casen_2017$e1[casen_2017$e1 == "No sabe/responde"] <- NA
casen_2017$e1[casen_2017$e1 == "No, sólo escribe"] <- "No"
casen_2020$e1[casen_2020$e1 == 1] <- "Sí"
casen_2020$e1[casen_2020$e1 == 0] <- "No"

Homologación de etnia

variable_etnia <- function(dataset){
  
  variable <- switch(i,"T4","T5","r6","r6","r3","r3","r3")
  
  
dataset[,variable][dataset[,variable] == "Aimara" ]  <- "Aymara"
dataset[,variable][dataset[,variable] == "No pertenece a ninguno de estos pueblos indígenas" ]  <-  "No pertenece a ningún pueblo indígena" 
dataset[,variable][dataset[,variable] == "Mapuche"]  <- "Mapuche"
dataset[,variable][dataset[,variable] == "Diaguita"]  <- "Diaguita"
dataset[,variable][dataset[,variable] == "Atacameño (Likan-Antai)" ]  <- "Atacameño"
dataset[,variable][dataset[,variable] == "Atacameño (Likán Antai)" ]  <- "Atacameño"
dataset[,variable][dataset[,variable] == "Atacameño (Likán-Antai)" ]  <- "Atacameño"
dataset[,variable][dataset[,variable] == "Yámana o Yagán" ]  <- "Yagán"
dataset[,variable][dataset[,variable] == "Yagan" ]  <- "Yagán"
dataset[,variable][dataset[,variable] == "Yagán (Yámana)" ]  <- "Yagán"
dataset[,variable][dataset[,variable] == "Rapa-Nui o Pascuenses"]  <- "Pascuense"
dataset[,variable][dataset[,variable] == "Rapa-Nui"]  <- "Pascuense"
dataset[,variable][dataset[,variable] == "Rapa Nui (Pascuense)"]  <- "Pascuense"
dataset[,variable][dataset[,variable] == "Collas"]  <- "Coya"
dataset[,variable][dataset[,variable] == "Kawashkar o Alacalufes" ]  <- "Alacalufe"
dataset[,variable][dataset[,variable] == "Kawashkar" ]  <- "Alacalufe"
dataset[,variable][dataset[,variable] == "Kawésqar (Alacalufes)" ]  <- "Alacalufe"
dataset[,variable][dataset[,variable] == "Kawésqar" ]  <- "Alacalufe"
dataset[,variable][dataset[,variable] == "Kawaskar" ]  <- "Alacalufe"
dataset[,variable][dataset[,variable] ==  "Sin dato"]  <- NA
dataset[,variable][dataset[,variable] ==  "NS/NR"   ]  <- NA
dataset[,variable][dataset[,variable] == "No sabe/no responde" ]  <- NA 
# df <<- dataset

  
    switch(i,
        case =  casen_2006 <<- dataset,
        case =  casen_2009 <<- dataset,
        case =  casen_2011 <<- dataset,
        case =  casen_2013 <<- dataset,
        case =  casen_2015 <<- dataset,
        case =  casen_2017 <<- dataset,
        case =  casen_2020 <<- dataset 
)
}

for (i in 1:7) {
  
  switch(i,
        case = casen <- casen_2006,
        case = casen <- casen_2009,
        case = casen <- casen_2011,
        case = casen <- casen_2013,
        case = casen <- casen_2015,
        case = casen <- casen_2017,
        case = casen <- casen_2020
)
  
  variable_etnia(casen)
  
}

Homologación de migración

for (i in unique(casen_2020$r2_pais_esp)) {
  pais <- gsub("(^[[:space:]]+|[[:space:]]+$)", "", i)
  pais <- tolower(pais)
  casen_2020$r2_pais_esp[casen_2020$r2_pais_esp == i] <- str_to_title(pais) 
} 

casen_2011$r2p_cod[casen_2011$r2p_cod == "No contesta"] <- "NS/NR"
casen_2013$r2_p_cod[casen_2013$r2_p_cod == "No contesta"] <- "NS/NR"
casen_2015$r2espp_cod[casen_2015$r2espp_cod == "No contesta"] <- "NS/NR"
casen_2017$r2_p_cod[casen_2017$r2_p_cod == "No Bien Especificado"] <- "NS/NR"
casen_2017$r2_p_cod[casen_2017$r2_p_cod == "No Responde"] <- "NS/NR"
casen_2020$r2_pais_esp[casen_2020$r2_pais_esp == "No Bien Especificado"] <- "NS/NR"
casen_2020$r2_pais_esp[casen_2020$r2_pais_esp == ""] <- NA
casen_2020$r2_pais_esp[casen_2020$r2_pais_esp == "No Responde"] <- "NS/NR"

Homologación de variable

variable_en_estudio <- function(dataset){
  
  variable <- switch(i,vv[1],vv[2],vv[3],vv[4],vv[5],vv[6])
  
 
dataset[,variable][dataset[,variable] ==  'I'] <- 'Decil I'
dataset[,variable][dataset[,variable] ==  'II'] <- 'Decil II'
dataset[,variable][dataset[,variable] ==  'III'] <- 'Decil III'
dataset[,variable][dataset[,variable] ==  'IV'] <- 'Decil IV'
dataset[,variable][dataset[,variable] ==  'IX'] <- 'Decil IX'
dataset[,variable][dataset[,variable] ==  'V'] <- 'Decil V'
dataset[,variable][dataset[,variable] ==  'VI'] <- 'Decil VI'
dataset[,variable][dataset[,variable] ==  'VII'] <- 'Decil VII'
dataset[,variable][dataset[,variable] ==  'VIII'] <- 'Decil VIII'
dataset[,variable][dataset[,variable] ==  'X'] <- 'Decil X'
dataset[,variable][dataset[,variable] ==  'NA'] <- 'No sabe o no responde'
dataset[,variable][dataset[,variable] ==  '0'] <- 'No sabe o no responde'

    switch(i,
        case =  casen_2006 <<- dataset,
        case =  casen_2009 <<- dataset,
        case =  casen_2011 <<- dataset,
        case =  casen_2013 <<- dataset,
        case =  casen_2015 <<- dataset,
        case =  casen_2017 <<- dataset,
        case =  casen_2020 <<- dataset 
)
}

for (i in 1:7) {
  
  switch(i,
        case = casen <- casen_2006,
        case = casen <- casen_2009,
        case = casen <- casen_2011,
        case = casen <- casen_2013,
        case = casen <- casen_2015,
        case = casen <- casen_2017,
        case = casen <- casen_2020
)
  
  variable_en_estudio(casen)
  
}
# carrera <- read_xlsx("C:/Users/enamo/Desktop/Shiny-R/ttcc_zoho/diccionarios/3/tabla 3.4.xlsx")
# # carrera <- carrera[-c(1:1),c(1,3)]
# carrera <- carrera[-c(1:1),c(3,4)]
# # names(carrera)[2] <- "Homologacion_002"
# carrera
# 
# #
# dataf1 <- data.frame()
# for (n in 1:nrow(carrera)) {
#   # dataf1 <- rbind(dataf1,paste0("dataset[,variable][dataset[,variable] ==  '",carrera[n,1],"']"," <- '",carrera[n,2],"'"))
#   dataf1 <- rbind(dataf1,paste0("dataset[,'cod_variable'][dataset[,'cod_variable'] ==  '",carrera[n,1],"']"," <- '",carrera[n,2],"'"))  # <- codigo numerico
# }
# dataf1 <- as.data.frame(dataf1)
# write_xlsx(dataf1,"el_total_final.xlsx")

0.0.1 2006

ab <- casen_2006

b <- ab$COMUNA
c <- ab[,c(vv[1])]
d <- ab$T4
e <- ab$SEXO
f <- ab$E1

cross_tab =  xtabs(ab$EXPC ~   unlist(b) + unlist(c)  + unlist(d) + unlist(e)  + unlist(f),aggregate(ab$EXPC ~  unlist(b) + unlist(c) + unlist(d) + unlist(e) + unlist(f) ,ab,mean))
tabla <- as.data.frame(cross_tab)
d <-tabla[!(tabla$Freq == 0),]
d$anio <- "2006"
      
names(d)[1] <- "comuna"
names(d)[2] <- "variable"
names(d)[3] <- "Etnia"
names(d)[4] <- "Sexo"
names(d)[5] <- "Sabe leer?"
names(d)[6] <- "Frecuencia"
names(d)[7] <- "Año"

d_2006 <- d

0.0.2 2009

ab <- casen_2009

b <- ab$COMUNA
c <- ab[,c(vv[2])]
d <- ab$T5
e <- ab$SEXO
f <- ab$E1

cross_tab =  xtabs(ab$EXPC ~   unlist(b) + unlist(c)  + unlist(d) + unlist(e)  + unlist(f),aggregate(ab$EXPC ~  unlist(b) + unlist(c) + unlist(d) + unlist(e) + unlist(f) ,ab,mean))
tabla <- as.data.frame(cross_tab)
d <-tabla[!(tabla$Freq == 0),]
d$anio <- "2009"
      
names(d)[1] <- "comuna"
names(d)[2] <- "variable"
names(d)[3] <- "Etnia"
names(d)[4] <- "Sexo"
names(d)[5] <- "Sabe leer?"
names(d)[6] <- "Frecuencia"
names(d)[7] <- "Año"

d_2009 <- d

0.0.3 2011

ab <- casen_2011

b <- ab$comuna
c <- ab[,c(vv[3])]
d <- ab$r6
e <- ab$sexo
f <- ab$e1

cross_tab =  xtabs(ab$expc_full ~   unlist(b) + unlist(c)  + unlist(d) + unlist(e)  + unlist(f),aggregate(ab$expc_full ~  unlist(b) + unlist(c) + unlist(d) + unlist(e) + unlist(f) ,ab,mean))
tabla <- as.data.frame(cross_tab)
d <-tabla[!(tabla$Freq == 0),]
d$anio <- "2011"
      
names(d)[1] <- "comuna"
names(d)[2] <- "variable"
names(d)[3] <- "Etnia"
names(d)[4] <- "Sexo"
names(d)[5] <- "Sabe leer?"
names(d)[6] <- "Frecuencia"
names(d)[7] <- "Año"

d_2011 <- d

0.0.4 2013

ab <- casen_2013

b <- ab$comuna
c <- ab[,c(vv[4])]
d <- ab$r6
e <- ab$sexo
f <- ab$e1

cross_tab =  xtabs(ab$expc ~   unlist(b) + unlist(c)  + unlist(d) + unlist(e)  + unlist(f),aggregate(ab$expc ~  unlist(b) + unlist(c) + unlist(d) + unlist(e) + unlist(f) ,ab,mean))
tabla <- as.data.frame(cross_tab)
d <-tabla[!(tabla$Freq == 0),]
d$anio <- "2013"
      
names(d)[1] <- "comuna"
names(d)[2] <- "variable"
names(d)[3] <- "Etnia"
names(d)[4] <- "Sexo"
names(d)[5] <- "Sabe leer?"
names(d)[6] <- "Frecuencia"
names(d)[7] <- "Año"

d_2013 <- d

0.0.5 2015

ab <- casen_2015

b <- ab$comuna
c <- ab[,c(vv[5])]
d <- ab$r3
e <- ab$sexo
f <- ab$e1

cross_tab =  xtabs(ab$expc_todas ~   unlist(b) + unlist(c)  + unlist(d) + unlist(e)  + unlist(f),aggregate(ab$expc_todas ~  unlist(b) + unlist(c) + unlist(d) + unlist(e) + unlist(f) ,ab,mean))
tabla <- as.data.frame(cross_tab)
d <-tabla[!(tabla$Freq == 0),]
d$anio <- "2015"
      
names(d)[1] <- "comuna"
names(d)[2] <- "variable"
names(d)[3] <- "Etnia"
names(d)[4] <- "Sexo"
names(d)[5] <- "Sabe leer?"
names(d)[6] <- "Frecuencia"
names(d)[7] <- "Año"

d_2015 <- d

0.0.6 2017

ab <- casen_2017

b <- ab$comuna
c <- ab[,c(vv[6])]
d <- ab$r3
e <- ab$sexo
f <- ab$e1

cross_tab =  xtabs(ab$expc ~   unlist(b) + unlist(c)  + unlist(d) + unlist(e)  + unlist(f),aggregate(ab$expc ~  unlist(b) + unlist(c) + unlist(d) + unlist(e) + unlist(f) ,ab,mean))
tabla <- as.data.frame(cross_tab)
d <-tabla[!(tabla$Freq == 0),]
d$anio <- "2017"
      
names(d)[1] <- "comuna"
names(d)[2] <- "variable"
names(d)[3] <- "Etnia"
names(d)[4] <- "Sexo"
names(d)[5] <- "Sabe leer?"
names(d)[6] <- "Frecuencia"
names(d)[7] <- "Año"

d_2017 <- d

Unimos y desplegamos la tabla corregida:

1 Tabla final etnia homologada

union_etnia <- rbind( d_2006,d_2009,d_2011,d_2013,d_2015, d_2017)
union_etnia <- mutate_if(union_etnia, is.factor, as.character)
#fn_etnia(union)

cod_com <- readRDS("C:/Users/enamo/Desktop/Shiny-R/Casen_en_pandemia_2020/codigos_comunales_2006-2020.rds") 
names(cod_com)[2] <- "comuna"
tab_f <- merge(x=union_etnia, y=cod_com, by="comuna") 
Etnia <- c(sort(unique(tab_f$Etnia)[-6]),"No pertenece a ningún pueblo indígena",NA)
Etnia<- as.data.frame(Etnia)
Etnia$cod_etnia <- paste("00",seq(1:nrow(Etnia)), sep = "")
codigos <- Etnia$cod_etnia
rango <- seq(1:nrow(Etnia))
cadena <- paste("",codigos[rango], sep = "")
cadena <- substr(cadena,(nchar(cadena)[rango])-(1),4)
codigos <- as.data.frame(codigos)
cadena <- as.data.frame(cadena)
codigos <- cbind(Etnia,cadena)  
colnames(codigos) <- c("Etnia","cadena","cod_etnia")

tab_f <- merge(x=tab_f, y=codigos, by="Etnia") 

tab_f$cod_sexo <- tab_f$Sexo
tab_f$cod_sexo[tab_f$cod_sexo == "Hombre"] <- "01"
tab_f$cod_sexo[tab_f$cod_sexo == "Mujer"] <- "02"

tab_f$cod_alfa <- tab_f$`Sabe leer?`
tab_f$cod_alfa[tab_f$cod_alfa == "Sí"] <- "01"
tab_f$cod_alfa[tab_f$cod_alfa == "No"] <- "02"


tab_f$cod_variable <- tab_f$variable
dataset <- tab_f

dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil I'] <- '1'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil II'] <- '2'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil III'] <- '3'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil IV'] <- '4'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil IX'] <- '5'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil V'] <- '6'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil VI'] <- '7'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil VII'] <- '8'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil VIII'] <- '9'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil X'] <- '10'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'No sabe o no responde'] <- '11'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'No sabe o no responde'] <- '11'






datatable(dataset, extensions = 'Buttons', escape = FALSE, rownames = FALSE,
          options = list(dom = 'Bfrtip',
          buttons = list('colvis', list(extend = 'collection',
          buttons = list(
          list(extend='copy'),
          list(extend='excel',
            filename = 'tabla'),
          list(extend='pdf',
            filename= 'tabla')),
          text = 'Download')), scrollX = TRUE))

2 MIGRA

2.0.1 2011

Generamos las tablas de contingencia tal como acostumbramos:

ab <- casen_2011

b <- ab$comuna
c <- ab[,c(vv[3])]
d <- ab$r2p_cod
e <- ab$sexo
f <- ab$e1

cross_tab =  xtabs(ab$expc_full ~   unlist(b) + unlist(c)  + unlist(d) + unlist(e)  + unlist(f),aggregate(ab$expc_full ~  unlist(b) + unlist(c) + unlist(d) + unlist(e) + unlist(f) ,ab,mean))
tabla <- as.data.frame(cross_tab)
d <-tabla[!(tabla$Freq == 0),]
d$anio <- "2011"

names(d)[1] <- "comuna"
names(d)[2] <- "variable"
names(d)[3] <- "Origen"
names(d)[4] <- "Sexo"
names(d)[5] <- "Sabe leer?"
names(d)[6] <- "Frecuencia"
names(d)[7] <- "Año"

d_2011 <- d

2.0.2 2013

ab <- casen_2013

b <- ab$comuna
c <- ab[,c(vv[4])]
d <- ab$r2_p_cod 
e <- ab$sexo
f <- ab$e1

cross_tab =  xtabs(ab$expc ~   unlist(b) + unlist(c)  + unlist(d) + unlist(e)  + unlist(f),aggregate(ab$expc ~  unlist(b) + unlist(c) + unlist(d) + unlist(e) + unlist(f) ,ab,mean)) 
tabla <- as.data.frame(cross_tab)
d <-tabla[!(tabla$Freq == 0),]
d$anio <- "2013"

names(d)[1] <- "comuna"
names(d)[2] <- "variable"
names(d)[3] <- "Origen"
names(d)[4] <- "Sexo"
names(d)[5] <- "Sabe leer?"
names(d)[6] <- "Frecuencia"
names(d)[7] <- "Año"
d_2013 <- d

2.0.3 2015

 ab <- casen_2015

b <- ab$comuna 
c <- ab[,c(vv[5])]
d <- ab$r2espp_cod 
e <- ab$sexo 
f <- ab$e1 

 cross_tab =  xtabs(ab$expc_todas ~   unlist(b) + unlist(c)  + unlist(d) + unlist(e)  + unlist(f),aggregate(ab$expc_todas ~  unlist(b) + unlist(c) + unlist(d) + unlist(e) + unlist(f) ,ab,mean))
 tabla <- as.data.frame(cross_tab)
 d <-tabla[!(tabla$Freq == 0),] 
 d$anio <- "2015"

names(d)[1] <- "comuna"
names(d)[2] <- "variable"
names(d)[3] <- "Origen"
names(d)[4] <- "Sexo"
names(d)[5] <- "Sabe leer?"
names(d)[6] <- "Frecuencia"
names(d)[7] <- "Año" 

 d_2015 <- d 

2.0.4 2017

ab <- casen_2017

b <- ab$comuna
c <- ab[,c(vv[6])]
d <- ab$r2_p_cod
e <- ab$sexo
f <- ab$e1

cross_tab =  xtabs(ab$expc~   unlist(b) + unlist(c)  + unlist(d) + unlist(e)  + unlist(f),aggregate(ab$expc ~  unlist(b) + unlist(c) + unlist(d) + unlist(e) + unlist(f) ,ab,mean))
tabla <- as.data.frame(cross_tab)
d <-tabla[!(tabla$Freq == 0),]
d$anio <- "2017"

names(d)[1] <- "comuna"
names(d)[2] <- "variable"
names(d)[3] <- "Origen"
names(d)[4] <- "Sexo"
names(d)[5] <- "Sabe leer?"
names(d)[6] <- "Frecuencia"
names(d)[7] <- "Año"

d_2017 <- d

Unimos y desplegamos la tabla corregida:

3 Tabla final inmigración homologada

union_etnia <- rbind(d_2011,d_2013,d_2015, d_2017)
union <- mutate_if(union_etnia, is.factor, as.character)
union$cod_sexo <- union$Sexo
union$cod_sexo[union$cod_sexo == "Hombre"] <- "01"
union$cod_sexo[union$cod_sexo == "Mujer"] <- "02"

union$cod_alfa <- union$`Sabe leer?`
union$cod_alfa[union$cod_alfa == "Sí"] <- "01"
union$cod_alfa[union$cod_alfa == "No"] <- "02"


union$cod_variable <- union$variable
dataset <- union



dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil I'] <- '1'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil II'] <- '2'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil III'] <- '3'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil IV'] <- '4'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil IX'] <- '5'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil V'] <- '6'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil VI'] <- '7'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil VII'] <- '8'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil VIII'] <- '9'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'Decil X'] <- '10'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'No sabe o no responde'] <- '11'
dataset[,'cod_variable'][dataset[,'cod_variable'] ==  'No sabe o no responde'] <- '11'




datatable(dataset, extensions = 'Buttons', escape = FALSE, rownames = FALSE,
          options = list(dom = 'Bfrtip',
          buttons = list('colvis', list(extend = 'collection',
          buttons = list(
          list(extend='copy'),
          list(extend='excel',
            filename = 'tabla'),
          list(extend='pdf',
            filename= 'tabla')),
          text = 'Download')), scrollX = TRUE))