8

This question already has an answer here:

Suppose I have data in an R table which looks like this:

Id  Name Price sales Profit Month Category Mode
1   A     2     5     8       1     X       K
1   A     2     6     9       2     X       K
1   A     2     5     8       3     X       K
1   B     2     4     6       1     Y       L
1   B     2     3     4       2     Y       L
1   B     2     5     7       3     Y       L
2   C     2     5    11       1     X       M
2   C     2     5    11       2     X       L
2   C     2     5    11       3     X       K
2   D     2     8    10       1     Y       M
2   D     2     8    10       2     Y       K
2   D     2     5    7        3     Y       K
3   E     2     5    9        1     Y       M
3   E     2     5    9        2     Y       L
3   E     2     5    9        3     Y       M
3   F     2     4    7        1     Z       M
3   F     2     5    8        2     Z       L
3   F     2     5    8        3     Z       M

If I use the table function on this data like:

table(df$Category, df$Mode)

It will show me under each mode which category has how many observations. It's like counting the number of items in each category under each mode.

But what if I want the table to show under each Category which Mode earned how much Profit (sum or mean) and not the total count?

Is there any way to do this with the table function or another function in R?

marked as duplicate by David Arenburg r Sep 10 '15 at 13:31

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • You can sum and count this way: tmp = aggregate(df$Category, by=list(Category=df$Mode), FUN=sum) or tmp = aggregate(df$Category, by=list(Category=df$Mode), FUN=NROW) (notice "sum" is lowercase and "NROW" is all caps). – Eric Leschinski Feb 10 '18 at 2:16
14

We can use xtabs from base R. By default, the xtabs gets the sum

xtabs(Profit~Category+Mode, df)
#           Mode
#Category  K  L  M
#       X 36 11 11
#       Y 17 26 28
#       Z  0  8 15

Or another base R option that is more flexible to apply different FUN is tapply.

with(df, tapply(Profit, list(Category, Mode), FUN=sum))
#  K  L  M
#X 36 11 11
#Y 17 26 28
#Z NA  8 15

Or we can use dcast to convert from 'long' to 'wide' format. It is more flexible as we can specify the fun.aggregate to sum, mean, median etc.

library(reshape2)
dcast(df, Category~Mode, value.var='Profit', sum)
# Category  K  L  M
#1        X 36 11 11
#2        Y 17 26 28
#3        Z  0  8 15

If you need it in the 'long' format, here is one option with data.table. We convert the 'data.frame' to 'data.table' (setDT(df)), grouped by 'Category' and 'Mode', we get the sum of 'Profit'.

library(data.table)
setDT(df)[, list(Profit= sum(Profit)) , by = .(Category, Mode)]
4

Another possibility consists in using the aggregate() function:

profit_dat <- aggregate(Profit ~ Category + Mode, data=df, sum)
#> profit_dat
#  Category Mode Profit
#1        X    K     36
#2        Y    K     17
#3        X    L     11
#4        Y    L     26
#5        Z    L      8
#6        X    M     11
#7        Y    M     28
#8        Z    M     15
3

I prefer using dplyr (and ggplot2) for most data analysis:

library(dplyr)

group_by(df, Category, Mode) %>%
  summarise(sum = sum, count=n())

https://cran.rstudio.com/web/packages/dplyr/vignettes/introduction.html

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