# How to create a function to conditionally execute arithmetic operations in multiple columns

Given the sample data `sampleDT` below, I would appreciate any help to create a function that efficiently does the following:

For each variable whose name begins with `dollar`:

• do `3-(5/j)` in those rows where `sampleDT\$employer==1` ;

• do `2*j` in those rows where `sampleDT\$employer==0`;

• put the result of the operation in a new variable located in the column next to the one where it was based;

• keep the values of `dollar.wage_1` unchanged;

• put the output of the operation in the new variable `euro.wage_x` whose name only replaces `dollar` by `euro` in the source variable `dollar.wage_x`. `x` is the number of `dollar.wage` variables.

• create new variables named `division.wage_x` which contain for each pair `dollar.wage_x` and `euro.wage_x` the result of division of `dollar.wage_x` by `euro.wage_x`.

Where `j` stands for the values that the variables `dollar.wage_1:dollar.wage_10` take.

Sample data

``````sampleDT<-structure(list(id = 1:10, N = c(10L, 10L, 10L, 10L, 10L, 10L,
10L, 10L, 10L, 10L), A = c(62L, 96L, 17L, 41L, 212L, 143L, 143L,
143L, 73L, 73L), B = c(3L, 1L, 0L, 2L, 170L, 21L, 0L, 33L, 62L,
17L), C = c(0.05, 0.01, 0, 0.05, 0.8, 0.15, 0, 0.23, 0.85, 0.23
), employer = c(1L, 1L, 0L, 1L, 0L, 1L, 1L, 0L, 0L, 0L), F = c(0L,
0L, 0L, 0L, 0L, 1L, 1L, 1L, 1L, 1L), G = c(1.94, 1.19, 1.16,
1.16, 1.13, 1.13, 1.13, 1.13, 1.12, 1.12), H = c(0.14, 0.24,
0.28, 0.28, 0.21, 0.12, 0.17, 0.07, 0.14, 0.12), dollar.wage_1 = c(1.94,
1.19, 3.16, 3.16, 1.13, 1.13, 2.13, 1.13, 1.12, 1.12), dollar.wage_2 = c(1.93,
1.18, 3.15, 3.15, 1.12, 1.12, 2.12, 1.12, 1.11, 1.11), dollar.wage_3 = c(1.95,
1.19, 3.16, 3.16, 1.14, 1.13, 2.13, 1.13, 1.13, 1.13), dollar.wage_4 = c(1.94,
1.18, 3.16, 3.16, 1.13, 1.13, 2.13, 1.13, 1.12, 1.12), dollar.wage_5 = c(1.94,
1.19, 3.16, 3.16, 1.14, 1.13, 2.13, 1.13, 1.12, 1.12), dollar.wage_6 = c(1.94,
1.18, 3.16, 3.16, 1.13, 1.13, 2.13, 1.13, 1.12, 1.12), dollar.wage_7 = c(1.94,
1.19, 3.16, 3.16, 1.14, 1.13, 2.13, 1.13, 1.12, 1.12), dollar.wage_8 = c(1.94,
1.19, 3.16, 3.16, 1.13, 1.13, 2.13, 1.13, 1.12, 1.12), dollar.wage_9 = c(1.94,
1.19, 3.16, 3.16, 1.13, 1.13, 2.13, 1.13, 1.12, 1.12), dollar.wage_10 = c(1.94,
1.19, 3.16, 3.16, 1.13, 1.13, 2.13, 1.13, 1.12, 1.12)), row.names = c(NA,
-10L), class = "data.frame")
``````

``````id N A  B  C   employer F G    H      dollar.wage_1 dollar.wage_2 dollar.wage_3 dollar.wage_4 dollar.wage_5 dollar.wage_6 dollar.wage_7 dollar.wage_8 dollar.wage_9 dollar.wage_10
1 10 62 3 0.05        1 0 1.94 0.14          1.94          1.93          1.95          1.94          1.94          1.94          1.94          1.94          1.94           1.94
2 10 96 1 0.01        1 0 1.19 0.24          1.19          1.18          1.19          1.18          1.19          1.18          1.19          1.19          1.19           1.19
3 10 17 0 0.00        0 0 1.16 0.28          3.16          3.15          3.16          3.16          3.16          3.16          3.16          3.16          3.16           3.16
``````

I am looking for an efficient way to do this because my actual dataset has over 1000 variables `dollar.wage_x`, where `x > 1000`.

Thanks in advance for any help.

Using `data.table`:

``````library(data.table)
setDT(sampleDT)
o_cols <- grep("^dollar", names(sampleDT), value = TRUE)
n_cols <- sub("^dollar", "euro", o_cols)
sampleDT[, (n_cols) := lapply(.SD, function(j) ifelse(employer == 1, 3 - 5 / j, 2 * j)), .SDcols = o_cols]

> sampleDT
id  N   A   B    C employer F    G    H dollar.wage_1 dollar.wage_2 dollar.wage_3 dollar.wage_4 dollar.wage_5 dollar.wage_6 dollar.wage_7
1:  1 10  62   3 0.05        1 0 1.94 0.14          1.94          1.93          1.95          1.94          1.94          1.94          1.94
2:  2 10  96   1 0.01        1 0 1.19 0.24          1.19          1.18          1.19          1.18          1.19          1.18          1.19
3:  3 10  17   0 0.00        0 0 1.16 0.28          3.16          3.15          3.16          3.16          3.16          3.16          3.16
4:  4 10  41   2 0.05        1 0 1.16 0.28          3.16          3.15          3.16          3.16          3.16          3.16          3.16
5:  5 10 212 170 0.80        0 0 1.13 0.21          1.13          1.12          1.14          1.13          1.14          1.13          1.14
6:  6 10 143  21 0.15        1 1 1.13 0.12          1.13          1.12          1.13          1.13          1.13          1.13          1.13
7:  7 10 143   0 0.00        1 1 1.13 0.17          2.13          2.12          2.13          2.13          2.13          2.13          2.13
8:  8 10 143  33 0.23        0 1 1.13 0.07          1.13          1.12          1.13          1.13          1.13          1.13          1.13
9:  9 10  73  62 0.85        0 1 1.12 0.14          1.12          1.11          1.13          1.12          1.12          1.12          1.12
10: 10 10  73  17 0.23        0 1 1.12 0.12          1.12          1.11          1.13          1.12          1.12          1.12          1.12
dollar.wage_8 dollar.wage_9 dollar.wage_10 euro.wage_1 euro.wage_2 euro.wage_3 euro.wage_4 euro.wage_5 euro.wage_6 euro.wage_7 euro.wage_8 euro.wage_9
1:          1.94          1.94           1.94   0.4226804   0.4093264   0.4358974   0.4226804   0.4226804   0.4226804   0.4226804   0.4226804   0.4226804
2:          1.19          1.19           1.19  -1.2016807  -1.2372881  -1.2016807  -1.2372881  -1.2016807  -1.2372881  -1.2016807  -1.2016807  -1.2016807
3:          3.16          3.16           3.16   6.3200000   6.3000000   6.3200000   6.3200000   6.3200000   6.3200000   6.3200000   6.3200000   6.3200000
4:          3.16          3.16           3.16   1.4177215   1.4126984   1.4177215   1.4177215   1.4177215   1.4177215   1.4177215   1.4177215   1.4177215
5:          1.13          1.13           1.13   2.2600000   2.2400000   2.2800000   2.2600000   2.2800000   2.2600000   2.2800000   2.2600000   2.2600000
6:          1.13          1.13           1.13  -1.4247788  -1.4642857  -1.4247788  -1.4247788  -1.4247788  -1.4247788  -1.4247788  -1.4247788  -1.4247788
7:          2.13          2.13           2.13   0.6525822   0.6415094   0.6525822   0.6525822   0.6525822   0.6525822   0.6525822   0.6525822   0.6525822
8:          1.13          1.13           1.13   2.2600000   2.2400000   2.2600000   2.2600000   2.2600000   2.2600000   2.2600000   2.2600000   2.2600000
9:          1.12          1.12           1.12   2.2400000   2.2200000   2.2600000   2.2400000   2.2400000   2.2400000   2.2400000   2.2400000   2.2400000
10:          1.12          1.12           1.12   2.2400000   2.2200000   2.2600000   2.2400000   2.2400000   2.2400000   2.2400000   2.2400000   2.2400000
euro.wage_10
1:    0.4226804
2:   -1.2016807
3:    6.3200000
4:    1.4177215
5:    2.2600000
6:   -1.4247788
7:    0.6525822
8:    2.2600000
9:    2.2400000
10:    2.2400000
``````
• I think you can mostly reuse my previous code, just change the definition of `n_cols` and change `ifelse(employer == 1, 3 - 5 / j, 2 * j)` to `j / ifelse(employer == 1, 3 - 5 / j, 2 * j)` Feb 6, 2019 at 14:16

Or base R:

``````sampleDT[, grepl("dollar", colnames(sampleDT))] <-
lapply(sampleDT[ , grepl("dollar", colnames(sampleDT))],
function(x) {
res <- 3 - 5 * x
res[sampleDT\$employer==0] <- 2 * x[sampleDT\$employer==0]
res
} )
``````

Here is one `tidyverse` possibility:

``````sampleDT %>%
mutate_at(vars(contains("dollar")), funs(euro.wage = ifelse(employer == 1, 3-(5/.), 2*.))) %>%
rename_at(vars(contains("euro.wage")),
funs(paste(sub(".*\\_", "", .), gsub("[^0-9]", "\\1", .), sep = "_")))

id  N   A   B    C employer F    G    H dollar.wage_1 dollar.wage_2
1   1 10  62   3 0.05        1 0 1.94 0.14          1.94          1.93
2   2 10  96   1 0.01        1 0 1.19 0.24          1.19          1.18
3   3 10  17   0 0.00        0 0 1.16 0.28          3.16          3.15
4   4 10  41   2 0.05        1 0 1.16 0.28          3.16          3.15
5   5 10 212 170 0.80        0 0 1.13 0.21          1.13          1.12
6   6 10 143  21 0.15        1 1 1.13 0.12          1.13          1.12
7   7 10 143   0 0.00        1 1 1.13 0.17          2.13          2.12
8   8 10 143  33 0.23        0 1 1.13 0.07          1.13          1.12
9   9 10  73  62 0.85        0 1 1.12 0.14          1.12          1.11
10 10 10  73  17 0.23        0 1 1.12 0.12          1.12          1.11
dollar.wage_3 dollar.wage_4 dollar.wage_5 dollar.wage_6 dollar.wage_7
1           1.95          1.94          1.94          1.94          1.94
2           1.19          1.18          1.19          1.18          1.19
3           3.16          3.16          3.16          3.16          3.16
4           3.16          3.16          3.16          3.16          3.16
5           1.14          1.13          1.14          1.13          1.14
6           1.13          1.13          1.13          1.13          1.13
7           2.13          2.13          2.13          2.13          2.13
8           1.13          1.13          1.13          1.13          1.13
9           1.13          1.12          1.12          1.12          1.12
10          1.13          1.12          1.12          1.12          1.12
dollar.wage_8 dollar.wage_9 dollar.wage_10 euro.wage_1 euro.wage_2 euro.wage_3
1           1.94          1.94           1.94   0.4226804   0.4093264   0.4358974
2           1.19          1.19           1.19  -1.2016807  -1.2372881  -1.2016807
3           3.16          3.16           3.16   6.3200000   6.3000000   6.3200000
4           3.16          3.16           3.16   1.4177215   1.4126984   1.4177215
5           1.13          1.13           1.13   2.2600000   2.2400000   2.2800000
6           1.13          1.13           1.13  -1.4247788  -1.4642857  -1.4247788
7           2.13          2.13           2.13   0.6525822   0.6415094   0.6525822
8           1.13          1.13           1.13   2.2600000   2.2400000   2.2600000
9           1.12          1.12           1.12   2.2400000   2.2200000   2.2600000
10          1.12          1.12           1.12   2.2400000   2.2200000   2.2600000
``````