getwd()
[1] "/cloud/project"
setwd("/cloud/project")
usedcars <- read.csv("usedcars.csv", stringsAsFactors = FALSE)
# get structure of used car data
str(usedcars)
'data.frame':   150 obs. of  6 variables:
 $ year        : int  2011 2011 2011 2011 2012 2010 2011 2010 2011 2010 ...
 $ model       : chr  "SEL" "SEL" "SEL" "SEL" ...
 $ price       : int  21992 20995 19995 17809 17500 17495 17000 16995 16995 16995 ...
 $ mileage     : int  7413 10926 7351 11613 8367 25125 27393 21026 32655 36116 ...
 $ color       : chr  "Yellow" "Gray" "Silver" "Gray" ...
 $ transmission: chr  "AUTO" "AUTO" "AUTO" "AUTO" ...
summary(usedcars$year) #give summary of use car by year 
   Min. 1st Qu.  Median    Mean 3rd Qu.    Max. 
   2000    2008    2009    2009    2010    2012 
summary(usedcars[c("price", "mileage")])
     price          mileage      
 Min.   : 3800   Min.   :  4867  
 1st Qu.:10995   1st Qu.: 27200  
 Median :13592   Median : 36385  
 Mean   :12962   Mean   : 44261  
 3rd Qu.:14904   3rd Qu.: 55124  
 Max.   :21992   Max.   :151479  
# show summary of use car based on price and mileage
#display the mean income
(36000 + 44000 + 56000) / 3
[1] 45333.33
mean(c(36000, 44000, 56000))
[1] 45333.33
# the median income
median(c(36000, 44000, 56000))
[1] 44000
# the range of used car prices
range(usedcars$price) 
[1]  3800 21992
# the difference of the range
diff(range(usedcars$price))
[1] 18192
IQR(usedcars$price)
[1] 3909.5
#show the middle value when someone order from lowest to Highest 
# use quantile to calculate five-number summary
quantile(usedcars$price)
     0%     25%     50%     75%    100% 
 3800.0 10995.0 13591.5 14904.5 21992.0 
#the 99th percentile
quantile(usedcars$price, probs = c(0.01, 0.99))
      1%      99% 
 5428.69 20505.00 
# quintiles
quantile(usedcars$price, seq(from = 0, to = 1, by = 0.20))
     0%     20%     40%     60%     80%    100% 
 3800.0 10759.4 12993.8 13992.0 14999.0 21992.0 
boxplot(usedcars$price, main="Boxplot of Used Car Prices",
      ylab="Price ($)")

boxplot(usedcars$mileage, main="Boxplot of Used Car Mileage",
      ylab="Odometer (mi.)")

# histograms of used car prices and mileage
hist(usedcars$price, main = "Histogram of Used Car Prices",
     xlab = "Price ($)")

hist(usedcars$mileage, main = "Histogram of Used Car Mileage",
     xlab = "Odometer (mi.)")

# variance and standard deviation of the used car data
var(usedcars$price)
[1] 9749892
sd(usedcars$price)
[1] 3122.482
var(usedcars$mileage)
[1] 728033954
sd(usedcars$mileage)
[1] 26982.1
#calculate Standard deviation of the Use car
# one-way tables for the used car data
table(usedcars$year)

2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 
   3    1    1    1    3    2    6   11   14   42   49   16 
2012 
   1 
table(usedcars$model)

 SE SEL SES 
 78  23  49 
table(usedcars$color)

 Black   Blue   Gold   Gray  Green    Red Silver  White 
    35     17      1     16      5     25     32     16 
Yellow 
     3 
# compute table proportions
model_table <- table(usedcars$model)
prop.table(model_table)

       SE       SEL       SES 
0.5200000 0.1533333 0.3266667 
# round the data
color_table <- table(usedcars$color)
color_pct <- prop.table(color_table) * 100
round(color_pct, digits = 1)

 Black   Blue   Gold   Gray  Green    Red Silver  White 
  23.3   11.3    0.7   10.7    3.3   16.7   21.3   10.7 
Yellow 
   2.0 
# scatterplot of price vs. mileage
plot(x = usedcars$mileage, y = usedcars$price,
     main = "Scatterplot of Price vs. Mileage",
     xlab = "Used Car Odometer (mi.)",
     ylab = "Used Car Price ($)")

# new variable indicating conservative colors
usedcars$conservative <-
  usedcars$color %in% c("Black", "Gray", "Silver", "White")
# checking our variable
table(usedcars$conservative)

FALSE  TRUE 
   51    99 
install.packages("gmodels")
Installing package into ‘/cloud/lib/x86_64-pc-linux-gnu-library/4.4’
(as ‘lib’ is unspecified)
also installing the dependencies ‘gtools’, ‘gdata’

trying URL 'http://rspm/default/__linux__/focal/latest/src/contrib/gtools_3.9.5.tar.gz'
Content type 'application/x-gzip' length 353487 bytes (345 KB)
==================================================
downloaded 345 KB

trying URL 'http://rspm/default/__linux__/focal/latest/src/contrib/gdata_3.0.1.tar.gz'
Content type 'application/x-gzip' length 489670 bytes (478 KB)
==================================================
downloaded 478 KB

trying URL 'http://rspm/default/__linux__/focal/latest/src/contrib/gmodels_2.19.1.tar.gz'
Content type 'application/x-gzip' length 115780 bytes (113 KB)
==================================================
downloaded 113 KB

* installing *binary* package ‘gtools’ ...
* DONE (gtools)
* installing *binary* package ‘gdata’ ...
* DONE (gdata)
* installing *binary* package ‘gmodels’ ...
* DONE (gmodels)

The downloaded source packages are in
    ‘/tmp/Rtmp2DVnxL/downloaded_packages’
# Crosstab of conservative by model
library(gmodels)
CrossTable(x = usedcars$model, y = usedcars$conservative)

 
   Cell Contents
|-------------------------|
|                       N |
| Chi-square contribution |
|           N / Row Total |
|           N / Col Total |
|         N / Table Total |
|-------------------------|

 
Total Observations in Table:  150 

 
               | usedcars$conservative 
usedcars$model |     FALSE |      TRUE | Row Total | 
---------------|-----------|-----------|-----------|
            SE |        27 |        51 |        78 | 
               |     0.009 |     0.004 |           | 
               |     0.346 |     0.654 |     0.520 | 
               |     0.529 |     0.515 |           | 
               |     0.180 |     0.340 |           | 
---------------|-----------|-----------|-----------|
           SEL |         7 |        16 |        23 | 
               |     0.086 |     0.044 |           | 
               |     0.304 |     0.696 |     0.153 | 
               |     0.137 |     0.162 |           | 
               |     0.047 |     0.107 |           | 
---------------|-----------|-----------|-----------|
           SES |        17 |        32 |        49 | 
               |     0.007 |     0.004 |           | 
               |     0.347 |     0.653 |     0.327 | 
               |     0.333 |     0.323 |           | 
               |     0.113 |     0.213 |           | 
---------------|-----------|-----------|-----------|
  Column Total |        51 |        99 |       150 | 
               |     0.340 |     0.660 |           | 
---------------|-----------|-----------|-----------|

 
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