1

I have a data frame similar to this sample:

df <- structure(list(Ball = structure(c(5L, 3L, 2L, 4L, 1L, 3L), .Label = c("blue", "blue is my favourite", "red", "red ", "red ball"), class = "factor"), size = c(1.2, 2, 3, 10, 12, 100)), .Names = c("Ball", "size"), class = "data.frame", row.names = c(NA, -6L))

Based on the information in the two columns I want to classify the items by size and color. The output should look like this:

structure(list(Ball = structure(c(5L, 3L, 2L, 4L, 1L, 3L), .Label = c("blue", "blue is my favourite", "red", "red ", "red ball"), class = "factor"), size = c(1.2, 2, 3, 10, 12, 100), Class = c("small red ball", "small red ball", "small blue ball", "medium red ball", "medium blue ball", "big red ball")), row.names = c(NA, -6L), .Names = c("Ball", "size", "Class"), class = "data.frame")

I have running code, but its very long and chaotic and I am sure there is a more neat way to get my desired output.

So what did I do?

I started with selecting the items of the first class and rename the selected df$Class values:

df["Class"] <- NA #add new column

df[grepl("red", df$Ball) & df$size <10, ]$Class <- "small red ball"

and because my grepl-selection is sometimes empty, I added a if (length() > 0) condition:

if (length(df[grepl("red", df$Ball) & df$size <10, ]$Class) > 0) {df[grepl("red", df$Ball) & df$size <10, ]$Class <- "small red ball"}

and finally I combined all my selections in a loop

df["Class"] <- NA #add new column
z <- c("red", "blue")

for (i in z){
  if (length(df[grepl(i, df$Ball) & df$size <10, ]$Class) > 0) {df[grepl(i, df$Ball) & df$size <10, ]$Class <- paste("small", i, "ball", sep=" ")}
  if (length(df[grepl(i, df$Ball) & df$size >=10 & df$size <100, ]$Class) > 0) {df[grepl(i, df$Ball) & df$size >=10 & df$size <100, ]$Class <- paste("medium", i, "ball", sep=" ")}
  if (length(df[grepl(i, df$Ball) & df$size >=100, ]$Class) > 0) {df[grepl(i, df$Ball) & df$size >=100, ]$Class <- paste("big", i, "ball", sep=" ")}
}

It works for two colors and three size categories, but my original data frame is much bigger. Therfore (and because it looks so chaotic), my question: How can I simplify my code?

2

We can use cut to create the grouping based on the 'size' and paste it with the extracted values of 'Ball' using str_extract

library(stringr)
df$Class <- with(df, paste(as.character(cut(size, breaks = c(1, 9, 99, Inf), 
   labels = c('small', 'medium', 'big'))),  str_extract(Ball, 'red|blue'), 'ball'))
df$Class
#[1] "small red ball"   "small red ball"   "small blue ball"
#[4] "medium red ball"  "medium blue ball" "big red ball"    
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  • 1
    I do not see the the essence of of the stringr package. I guess base r works fin: paste(as.character(cut(df$size,c(1,10,100,Inf), c("small","medium","large"))), sub("[^(red|blue)].*","",df$Ball),'Ball') – Onyambu Dec 27 '17 at 19:53
  • @Onyambu Sure the sub works, but if there are no matches, then it could return the whole string where as str_extract returns NA. One workaround would be regexpr/regmatches – akrun Dec 27 '17 at 19:55
  • The breaks should be c(1, 9, 99, Inf) for small: x < 10, medium 10 <= x < 100, large: x >= 100, right? – Iris Dec 28 '17 at 8:46
  • 1
    @Iris Yes, sorry, I didn't check the breaks earlier. Corrected it – akrun Dec 28 '17 at 8:48
2

This answer is very similar to @akrun's, but you can include more colors (here's I'm using the colors() palette, but you can use other ones as well. I also slightly changed the arguments for the cut function.

size<- cut(df$size, c(0, 10, 100, Inf), labels = c("small", "medium", "big"), right=F)
colors<- str_extract(df$Ball, paste(colors(), collapse="|"))
df$Class<- paste(size, colors, "ball", sep = " ")

> df
                  Ball  size            Class
1             red ball   1.2   small red ball
2                  red   2.0   small red ball
3 blue is my favourite   3.0  small blue ball
4                 red   10.0  medium red ball
5                 blue  12.0 medium blue ball
6                  red 100.0     big red ball

Also, to make it a bit more general, you can allow for capital letters by using:

colors<- str_extract(df$Ball, regex(paste(colors(), collapse="|"), ignore_case=T))

So if df$Ball[1] = "Red ball", using the line above you get:

colors
#[1] "Red"  "red"  "blue" "red"  "blue" "red" 
df$Class<- paste(size, tolower(colors), "ball", sep = " ")
df$Class
#[1] "small red ball"   "small red ball"   "small blue ball"  "medium red ball"  "medium blue ball"
#[6] "big red ball"
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1

Seems like a great case to use the dplyr and stringr packages:

library(stringr)
library(dplyr)

df <- structure(list(Ball = structure(c(5L, 3L, 2L, 4L, 1L, 3L), .Label = c("blue", "blue is my favourite", "red", "red ", "red ball"), class = "factor"), size = c(1.2, 2, 3, 10, 12, 100)), .Names = c("Ball", "size"), class = "data.frame", row.names = c(NA, -6L))


df %>%
  mutate(
    color = str_extract(`Ball`, "(red)|(blue)"),
    size_category = case_when(
      size < 10 ~ "small",
      size >= 10 & size < 100 ~ "medium",
      size >= 100 ~ "large"
    ),
    category = str_c(size_category, color, "ball", sep = " ")
  )
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