106

I have a data.table with which I'd like to perform the same operation on certain columns. The names of these columns are given in a character vector. In this particular example, I'd like to multiply all of these columns by -1.

Some toy data and a vector specifying relevant columns:

library(data.table)
dt <- data.table(a = 1:3, b = 1:3, d = 1:3)
cols <- c("a", "b")

Right now I'm doing it this way, looping over the character vector:

for (col in 1:length(cols)) {
   dt[ , eval(parse(text = paste0(cols[col], ":=-1*", cols[col])))]
}

Is there a way to do this directly without the for loop?

0

7 Answers 7

181

This seems to work:

dt[ , (cols) := lapply(.SD, "*", -1), .SDcols = cols]

The result is

    a  b d
1: -1 -1 1
2: -2 -2 2
3: -3 -3 3

There are a few tricks here:

  • Because there are parentheses in (cols) :=, the result is assigned to the columns specified in cols, instead of to some new variable named "cols".
  • .SDcols tells the call that we're only looking at those columns, and allows us to use .SD, the Subset of the Data associated with those columns.
  • lapply(.SD, ...) operates on .SD, which is a list of columns (like all data.frames and data.tables). lapply returns a list, so in the end j looks like cols := list(...).

EDIT: Here's another way that is probably faster, as @Arun mentioned:

for (j in cols) set(dt, j = j, value = -dt[[j]])
15
  • 27
    another way is to use set with a for-loop. I suspect it'll be faster.
    – Arun
    May 30, 2013 at 22:33
  • 3
    @Arun I've made an edit. Is that what you meant? I haven't used set before.
    – Frank
    May 30, 2013 at 23:17
  • 9
    +1 Great answer. Yes I prefer a for loop with set for cases like this, too.
    – Matt Dowle
    May 31, 2013 at 14:28
  • 4
    Yes, using set() seems faster, ~4 times faster for my dataset! Amazing. Feb 24, 2016 at 12:16
  • 2
    Thanks, @JamesHirschorn . I'm not sure, but I suspect there's more overhead to subsetting columns that way rather than using .SD, which is the standard idiom anyway, appearing in the intro vignette github.com/Rdatatable/data.table/wiki/Getting-started Part of the reason for the idiom, I think, is to avoid typing the table name twice.
    – Frank
    Nov 18, 2016 at 15:41
23

I would like to add an answer, when you would like to change the name of the columns as well. This comes in quite handy if you want to calculate the logarithm of multiple columns, which is often the case in empirical work.

cols <- c("a", "b")
out_cols = paste("log", cols, sep = ".")
dt[, c(out_cols) := lapply(.SD, function(x){log(x = x, base = exp(1))}), .SDcols = cols]
4
  • 1
    Is there a way to change the names based on a rule? In dplyr, for example, you can do iris %>% mutate_at(vars(matches("Sepal")), list(times_two = ~.*2)) and it will append "_times_two" to the new names.
    – kennyB
    Apr 16, 2019 at 5:58
  • 1
    I don't think that's possible, but not really sure about it.
    – hannes101
    Apr 16, 2019 at 7:22
  • this would add columns with the names of out_cols, while still leaving cols in place. So, you'd need to eliminate those by either explicitly 1) asking for only log.a and log.b: chain a [,.(outcols)] to the end and re-store to dt via <-. 2) remove the old columns with a chained [,c(cols):=NULL]. A non-chaining solution 3) isdt[,c(cols):=...] followed by setnames(dt, cols, newcols)
    – mpag
    Jul 15, 2019 at 22:34
  • @mpag, yes that's true, but for my use case of empirical research I most of the time need both series in the data set.
    – hannes101
    Jul 16, 2019 at 7:07
13

UPDATE: Following is a neat way to do it without for loop

dt[,(cols):= - dt[,..cols]]

It is a neat way for easy code readability. But as for performance it stays behind Frank's solution according to below microbenchmark result

mbm = microbenchmark(
  base = for (col in 1:length(cols)) {
    dt[ , eval(parse(text = paste0(cols[col], ":=-1*", cols[col])))]
  },
  franks_solution1 = dt[ , (cols) := lapply(.SD, "*", -1), .SDcols = cols],
  franks_solution2 =  for (j in cols) set(dt, j = j, value = -dt[[j]]),
  hannes_solution = dt[, c(out_cols) := lapply(.SD, function(x){log(x = x, base = exp(1))}), .SDcols = cols],
  orhans_solution = for (j in cols) dt[,(j):= -1 * dt[,  ..j]],
  orhans_solution2 = dt[,(cols):= - dt[,..cols]],
  times=1000
)
mbm

Unit: microseconds
expr                  min        lq      mean    median       uq       max neval
base_solution    3874.048 4184.4070 5205.8782 4452.5090 5127.586 69641.789  1000  
franks_solution1  313.846  349.1285  448.4770  379.8970  447.384  5654.149  1000    
franks_solution2 1500.306 1667.6910 2041.6134 1774.3580 1961.229  9723.070  1000    
hannes_solution   326.154  405.5385  561.8263  495.1795  576.000 12432.400  1000
orhans_solution  3747.690 4008.8175 5029.8333 4299.4840 4933.739 35025.202  1000  
orhans_solution2  752.000  831.5900 1061.6974  897.6405 1026.872  9913.018  1000

as shown in below chart

performance_comparison_chart

My Previous Answer: The following also works

for (j in cols)
  dt[,(j):= -1 * dt[,  ..j]]
9
  • This is essentially the same thing as Frank's answer from a year and a half ago. Apr 2, 2018 at 13:00
  • 1
    Thanks, Frank's answer was using set. When I work with large data.table's with millions of rows, I see := operator outperforms functions Apr 2, 2018 at 13:17
  • 2
    The reason I added an answer to an old question is as follows: I also had a similar issue, I came across this post with google search. Afterwards I found a solution to my issue, and I see it applies to here as well. Actually my suggestion uses a new function of data.table that is available in new versions of the library, which did not exist in the time of the question. I thought it is a good idea to share, thinking others with similar problem will end up here with google search. Apr 3, 2018 at 7:24
  • 2
    Are you benchmarking with dt consisting of 3 rows?
    – Uwe
    Apr 4, 2018 at 12:38
  • 3
    Hannes' answer is doing a different computation and so shouldn't be compared with the others, right?
    – Frank
    Jun 29, 2018 at 14:42
2

None of above solutions seems to work with calculation by group. Following is the best I got:

for(col in cols)
{
    DT[, (col) := scale(.SD[[col]], center = TRUE, scale = TRUE), g]
}
2

dplyr functions work on data.tables, so here's a dplyr solution that also "avoids the for-loop" :)

dt %>% mutate(across(all_of(cols), ~ -1 * .))

I benchmarked it using orhan's code (adding rows and columns) and you'll see dplyr::mutate with across mostly executes faster than most of the other solutions and slower than the data.table solution using lapply.

library(data.table); library(dplyr)
dt <- data.table(a = 1:100000, b = 1:100000, d = 1:100000) %>% 
  mutate(a2 = a, a3 = a, a4 = a, a5 = a, a6 = a)
cols <- c("a", "b", "a2", "a3", "a4", "a5", "a6")

dt %>% mutate(across(all_of(cols), ~ -1 * .))
#>               a       b      d      a2      a3      a4      a5      a6
#>      1:      -1      -1      1      -1      -1      -1      -1      -1
#>      2:      -2      -2      2      -2      -2      -2      -2      -2
#>      3:      -3      -3      3      -3      -3      -3      -3      -3
#>      4:      -4      -4      4      -4      -4      -4      -4      -4
#>      5:      -5      -5      5      -5      -5      -5      -5      -5
#>     ---                                                               
#>  99996:  -99996  -99996  99996  -99996  -99996  -99996  -99996  -99996
#>  99997:  -99997  -99997  99997  -99997  -99997  -99997  -99997  -99997
#>  99998:  -99998  -99998  99998  -99998  -99998  -99998  -99998  -99998
#>  99999:  -99999  -99999  99999  -99999  -99999  -99999  -99999  -99999
#> 100000: -100000 -100000 100000 -100000 -100000 -100000 -100000 -100000

library(microbenchmark)
mbm = microbenchmark(
  base_with_forloop = for (col in 1:length(cols)) {
    dt[ , eval(parse(text = paste0(cols[col], ":=-1*", cols[col])))]
  },
  franks_soln1_w_lapply = dt[ , (cols) := lapply(.SD, "*", -1), .SDcols = cols],
  franks_soln2_w_forloop =  for (j in cols) set(dt, j = j, value = -dt[[j]]),
  orhans_soln_w_forloop = for (j in cols) dt[,(j):= -1 * dt[,  ..j]],
  orhans_soln2 = dt[,(cols):= - dt[,..cols]],
  dplyr_soln = (dt %>% mutate(across(all_of(cols), ~ -1 * .))),
  times=1000
)

library(ggplot2)
ggplot(mbm) +
  geom_violin(aes(x = expr, y = time)) +
  coord_flip()

Created on 2020-10-16 by the reprex package (v0.3.0)

1

To add example to create new columns based on a string vector of columns. Based on Jfly answer:

dt <- data.table(a = rnorm(1:100), b = rnorm(1:100), c = rnorm(1:100), g = c(rep(1:10, 10)))

col0 <- c("a", "b", "c")
col1 <- paste0("max.", col0)  

for(i in seq_along(col0)) {
  dt[, (col1[i]) := max(get(col0[i])), g]
}

dt[,.N, c("g", col1)]
0
library(data.table)
(dt <- data.table(a = 1:3, b = 1:3, d = 1:3))

Hence:

   a b d
1: 1 1 1
2: 2 2 2
3: 3 3 3

Whereas (dt*(-1)) yields:

    a  b  d
1: -1 -1 -1
2: -2 -2 -2
3: -3 -3 -3
4
  • 1
    Fyi, the "every specified column" in the title meant that the asker was interested in applying it to a subset of columns (maybe not all of them).
    – Frank
    Jan 23, 2019 at 16:14
  • 1
    @Frank sure! In that case the OP could perform dt[,c("a","b")]*(-1).
    – amonk
    Jan 23, 2019 at 16:23
  • 1
    Well, let's be complete and say dt[, cols] <- dt[, cols] * (-1) Jan 23, 2019 at 16:45
  • seems like the new syntax required is dt[, cols] <- dt[, ..cols] * (-1)
    – Arthur Yip
    Oct 16, 2020 at 11:01

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