0

Similar to this question, given tmpp:

library(data.table)
library(tidyverse)
tmpp <- data.table(
  "ID" = c(1,1,1,2,2), 
  "Date" = c(1,2,3,1,2), 
  "total_neg" = c(1,1,0,0,2),
  "total_pos" = c(4,5,2,4,5),
  "H1" = c(5,4,0,5,-5),
  "H2" = c(5,-10,5,5,-5),
  "H3" = c(-10,6,5,0,10)
)
tmpp
#    ID Date total_neg total_pos H1  H2  H3
# 1:  1    1         1         4  5   5 -10
# 2:  1    2         1         5  4 -10   6
# 3:  1    3         0         2  0   5   5
# 4:  2    1         0         4  5   5   0
# 5:  2    2         2         5 -5  -5  10

I want to replace all variables starting with H, with NA where total_neg == 1 :

#    ID Date total_neg total_pos H1  H2  H3
# 1:  1    1         1         4  NA NA NA
# 2:  1    2         1         5  NA NA NA
# 3:  1    3         0         2  0   5   5
# 4:  2    1         0         4  5   5   0
# 5:  2    2         2         5 -5  -5  10

Why don't these work?

tmpp %>%
  mutate_at(vars(matches("H")), ~ifelse( .$total_neg == 1, NA, .))

tmpp %>%
  mutate_at(vars(matches("H"),
            .funs = list(~ ifelse(.$total_neg == 1, NA, .))))
#im guessing the first dot in the ifelse statements above is referring to the H columns so I tried:
tmpp %>%
  mutate_at(vars(matches("H"),
                 .funs = list(~ ifelse(tmpp$total_neg == 1, NA, .))))

Happy to see across version too, thanks

1
  • 1
    For your first option, just remove the .$...so it will be mutate_at(vars(matches("H")), ~ ifelse(total_neg == 1, NA, .)). But since you are defining a data.table, why not use data.table methods throughout?
    – Sotos
    Oct 13 '20 at 14:40
6

A simple data.table solution that updates all the columns at once & in-place only for the subset

tmpp[total_neg == 1, grep("^H", names(tmpp)) := NA]
tmpp
#    ID Date total_neg total_pos H1 H2 H3
# 1:  1    1         1         4 NA NA NA
# 2:  1    2         1         5 NA NA NA
# 3:  1    3         0         2  0  5  5
# 4:  2    1         0         4  5  5  0
# 5:  2    2         2         5 -5 -5 10
4

You don't need to use $ in dplyr pipe. In mutate_at/across it refers to column value. Try :

library(dplyr)
tmpp %>% mutate(across(starts_with('H'), ~replace(., total_neg == 1, NA)))

#   ID Date total_neg total_pos H1 H2 H3
#1:  1    1         1         4 NA NA NA
#2:  1    2         1         5 NA NA NA
#3:  1    3         0         2  0  5  5
#4:  2    1         0         4  5  5  0
#5:  2    2         2         5 -5 -5 10
2

Maybe you can use starts_with() inside across(). Here the code:

library(data.table)
library(tidyverse)
tmpp <- data.table(
  "ID" = c(1,1,1,2,2), 
  "Date" = c(1,2,3,1,2), 
  "total_neg" = c(1,1,0,0,2),
  "total_pos" = c(4,5,2,4,5),
  "H1" = c(5,4,0,5,-5),
  "H2" = c(5,-10,5,5,-5),
  "H3" = c(-10,6,5,0,10)
)
#Code
tmpp %>% 
  mutate(across(starts_with('H'),~ifelse(total_neg==1,NA,.)))

Output:

   ID Date total_neg total_pos H1 H2 H3
1:  1    1         1         4 NA NA NA
2:  1    2         1         5 NA NA NA
3:  1    3         0         2  0  5  5
4:  2    1         0         4  5  5  0
5:  2    2         2         5 -5 -5 10
2

Your guess is correct: inside the purrr-style anonymous function (after your ~), . refers to the function argument, which is a single column, not the data frame you piped in. The solution is to simplify by removing the .$.

tmpp %>%
  mutate_at(vars(matches("H")), ~ifelse(total_neg == 1, NA, .))
#    ID Date total_neg total_pos H1 H2 H3
# 1:  1    1         1         4 NA NA NA
# 2:  1    2         1         5 NA NA NA
# 3:  1    3         0         2  0  5  5
# 4:  2    1         0         4  5  5  0
# 5:  2    2         2         5 -5 -5 10

If you want to modify "all variables starting with H", I'd strongly suggest using starts_with("H") rather than matches("H").

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