7

What is the dplyr way to apply a function rowwise for some columns. For example I want to Grab all the V, columns and turn them into percents based on the row sums. I show how to do it in base. What about in a dplyr chain. It'd nice to see in data.table form as well (though preference would go to a dplyr solution here).

x <- data.frame(A=LETTERS[1:5], as.data.frame(matrix(sample(0:5, 25, T), ncol=5)))

data.frame(x[1], x[-1]/rowSums(x[-1]))


##   A        V1        V2        V3         V4         V5
## 1 A 0.1428571 0.2142857 0.2142857 0.35714286 0.07142857
## 2 B 0.2000000 0.2000000 0.1500000 0.20000000 0.25000000
## 3 C 0.3571429 0.2857143 0.0000000 0.07142857 0.28571429
## 4 D 0.1904762 0.2380952 0.1904762 0.23809524 0.14285714
## 5 E 0.2000000 0.2500000 0.1500000 0.25000000 0.15000000

library(dplyr)

props <- function(x) round(x/sum(x), 2)

# does not work
x %>%
    rowwise()
    mutate(props(matches("^.{2}$")))
7
  • 1
    Maybe x %>% rowwise() %>% select(matches("^.{2}$")) %>% props %>% cbind(x[1], .)? The second half isn't really dplyrey though Apr 9 '16 at 21:27
  • 2
    I'm not a dplyr expert, but can't you just use rowSums in dplyr too? Something like props <- function(x, y) round(x/y, 2) ; x %>% mutate(Total = rowSums(.[-1])) %>% mutate_each(funs(./Total), -c(A, Total)). Though both rowSums and rowwise should be inefficient. I would go with Reduce(`+`, .[-1])) instead, if you don't have NAs. Apr 9 '16 at 21:30
  • @DavidArenburg Nice can you throw down as an answer. It works. Apr 9 '16 at 21:39
  • 1
    @Frank true no need. I'll remove, though it sould allow anyone to just run the code with no need to type library etc. to get dplyr. Apr 9 '16 at 21:49
  • 2
    A "known data.table guy" who is near hadley in the SO dplyr answers leaderboard :) stackoverflow.com/tags/dplyr/topusers
    – Frank
    Apr 9 '16 at 22:11
7

In data.table, you can do

library(data.table)
setDT(x)

x[, grep("^V",names(DT)) := .SD/Reduce(`+`, .SD), .SDcols = V1:V5]

   A         V1        V2        V3         V4         V5
1: A 0.28571429 0.0000000 0.2857143 0.07142857 0.35714286
2: B 0.23076923 0.2307692 0.3076923 0.15384615 0.07692308
3: C 0.44444444 0.0000000 0.4444444 0.00000000 0.11111111
4: D 0.07142857 0.3571429 0.1428571 0.07142857 0.35714286
5: E 0.00000000 0.2222222 0.3333333 0.44444444 0.00000000

To compute the denominator with NA values ignored, I guess rowSums is an option, though it will coerce .SD to a matrix as an intermediate step.

5
  • It''s fine. I didn't invent Reduce(`+`,.... I'm just wondering if this isn't a dupe? Apr 9 '16 at 21:46
  • 1
    stackoverflow.com/questions/35306500/… is relevant, though not exactly the same. Apr 9 '16 at 21:52
  • @DavidArenburg Seems it should be a dupe but I couldn't find one with an obvious title. Apr 9 '16 at 21:53
  • 3
    @thelatemail We are doing these Reduce(`+`, .SD) for some time now. Here's akrun in 2014 Apr 9 '16 at 21:57
  • 1
    Didn't realize you could pass column numbers on LHS of :=... I would have used value = TRUE Apr 10 '16 at 16:19
6

You can combine 's spread and gather with to get the following single pipeline:

x <- data.frame(A=LETTERS[1:5], as.data.frame(matrix(sample(0:5, 25, T), ncol=5)))

y <- x %>% 
        gather(V, val, -A) %>% 
        group_by(A) %>% 
        mutate(perc = val / sum(val)) %>% 
        select(-val) %>%
        spread(V, perc)

With tidy data it's quite easy to get any group-wise sum (rows, columns or any nested index-level) and compute percentages. The spread and gather will get you to and from your input data format.

3
  • Ahh makes perfect sense. This is a "why didn't I think of that moment". Apr 9 '16 at 22:26
  • doing a by-row grouping like this, my guess is this will slow down quickly as data grows
    – eddi
    Apr 11 '16 at 20:15
  • @eddi I haven't tested this on big data. dplyr probably isn't the best way for that any way. I doubt that it would be slower than the data.frame rescaling by rowSums that the OP showed. In the tidy data format, one could always do an arrange(A) before doing the group_by(A), so that the data per group is sequentially processed. Apr 12 '16 at 9:05
0

Another "tidyverse" solution is to use a select within a mutate. E.g.

library(tidyverse)

x <- data.frame(A=LETTERS[1:5], as.data.frame(matrix(sample(0:5, 25, T), ncol=5)))

x %>% 
  mutate(row_counts = select_if(., is.numeric) %>% rowSums()) %>% 
  mutate_at(vars(contains("V")), funs(./row_counts)) %>% 
  select(-row_counts)
#>   A        V1         V2        V3        V4        V5
#> 1 A 0.0000000 0.14285714 0.1428571 0.5714286 0.1428571
#> 2 B 0.0000000 0.62500000 0.1250000 0.1250000 0.1250000
#> 3 C 0.2222222 0.11111111 0.2222222 0.1111111 0.3333333
#> 4 D 0.3000000 0.50000000 0.1000000 0.1000000 0.0000000
#> 5 E 0.3333333 0.06666667 0.1333333 0.3333333 0.1333333

Created on 2019-02-16 by the reprex package (v0.2.1)

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