0

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")

Head output

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.

0

3 Answers 3

1

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
1
  • 1
    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
1

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
        } )
0
1

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
0

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.