1

Suppose a respondent (id) is asked to make a choice in five tasks (t=1,2,3,4,5) (a panel dataset with five observations per respondent). Once, a choice is made then an outcome is shown to the respondent. Suppose the data look like below.

+----+---+---------+
| id | t | outcome |
+----+---+---------+
|  1 | 1 |      10 |
|  1 | 2 |      20 |
|  1 | 3 |      30 |
|  1 | 4 |      40 |
|  1 | 5 |      40 |
|  2 | 1 |      20 |
|  2 | 2 |      30 |
|  2 | 3 |      40 |
|  2 | 4 |      40 |
|  2 | 5 |      20 |
|  . | . |       . |
|  . | . |       . |
|  . | . |       . |
+----+---+---------+

Now, I am interested to keep the history of the outcome variable for each t-1 task. I am aiming for the below output.


+----+---+---------+------------+------------+------------+------------+------------+
| id | t | outcome | outcome_t1 | outcome_t2 | outcome_t3 | outcome_t4 | outcome_t5 |
+----+---+---------+------------+------------+------------+------------+------------+
|  1 | 1 |      10 | NA         | NA         | NA         | NA         | NA         |
|  1 | 2 |      20 | 10         | NA         | NA         | NA         | NA         |
|  1 | 3 |      30 | 10         | 20         | NA         | NA         | NA         |
|  1 | 4 |      40 | 10         | 20         | 30         | NA         | NA         |
|  1 | 5 |      40 | 10         | 20         | 30         | 40         | NA         |
|  2 | 1 |      20 | NA         | NA         | NA         | NA         | NA         |
|  2 | 2 |      30 | 20         | NA         | NA         | NA         | NA         |
|  2 | 3 |      40 | 20         | 30         | NA         | NA         | NA         |
|  2 | 4 |      40 | 20         | 30         | 40         | NA         | NA         |
|  2 | 5 |      20 | 20         | 30         | 40         | 40         | NA         |
|  . | . |       . | .          | .          | .          | .          | .          |
|  . | . |       . | .          | .          | .          | .          | .          |
|  . | . |       . | .          | .          | .          | .          | .          |
+----+---+---------+------------+------------+------------+------------+------------+

I went through most of the questions on this forum, but most of them address the lagged columns which are not applicable to this case.

Perhaps there could be an easy and efficient way using mutate with dplyr but I am unable to make it work so far.

2

Base R approach, we can split the outcome column based on id and create a dataframe incrementally adding one value at a time in outcome variable and filling rest of them with NA and finally rbind these list of dataframes into one dataframe.

n <- 5
df[paste0("outcome_t", seq_len(n))] <- do.call(rbind, 
    lapply(split(df$outcome, df$id), function(x) 
  t(sapply(seq_along(x), function(y) c(x[seq_len(y - 1)], rep(NA, n - (y - 1)))))))

df
#   id t outcome outcome_t1 outcome_t2 outcome_t3 outcome_t4 outcome_t5
#1   1 1      10         NA         NA         NA         NA         NA
#2   1 2      20         10         NA         NA         NA         NA
#3   1 3      30         10         20         NA         NA         NA
#4   1 4      40         10         20         30         NA         NA
#5   1 5      40         10         20         30         40         NA
#6   2 1      20         NA         NA         NA         NA         NA
#7   2 2      30         20         NA         NA         NA         NA
#8   2 3      40         20         30         NA         NA         NA
#9   2 4      40         20         30         40         NA         NA
#10  2 5      20         20         30         40         40         NA

A tidyverse option using separate

library(tidyverse)

df %>%
   group_by(id) %>%
   mutate(new = map_chr(seq_along(outcome), 
         ~paste0(outcome[seq_len(. - 1)], collapse = ","))) %>%
   separate(new, into = paste0("outcome_t", seq_len(n)), 
                 sep = ",", fill = "right") %>%
   mutate(outcome_t1 = replace(outcome_t1, outcome_t1 == "", NA))

data

df <- data.frame(id = rep(c(1, 2), each = 5), t = 1:5, 
     outcome = c(10, 20, 30, 40, 40, 20, 30, 40, 40, 20))
2

Another data.table approach using transpose:

DT[, paste0("outcome_t", 1:5) := 
        transpose(lapply(t, function(x) replace(outcome, t>=x, NA))), 
    by=.(id)]

output:

    id t outcome outcome_t1 outcome_t2 outcome_t3 outcome_t4 outcome_t5
 1:  1 1      10         NA         NA         NA         NA         NA
 2:  1 2      20         10         NA         NA         NA         NA
 3:  1 3      30         10         20         NA         NA         NA
 4:  1 4      40         10         20         30         NA         NA
 5:  1 5      40         10         20         30         40         NA
 6:  2 1      20         NA         NA         NA         NA         NA
 7:  2 2      30         20         NA         NA         NA         NA
 8:  2 3      40         20         30         NA         NA         NA
 9:  2 4      40         20         30         40         NA         NA
10:  2 5      20         20         30         40         40         NA

data:

library(data.table)
DT <- fread("| id | t | outcome |
|  1 | 1 |      10 |
|  1 | 2 |      20 |
|  1 | 3 |      30 |
|  1 | 4 |      40 |
|  1 | 5 |      40 |
|  2 | 1 |      20 |
|  2 | 2 |      30 |
|  2 | 3 |      40 |
|  2 | 4 |      40 |
|  2 | 5 |      20 |")[, c(-1,-5)]
2

Here is a tidyverse approach.

library(tidyverse)

df %>% 
  mutate(rn = 1:n(),
         t = paste0("outcome_t", t)) %>%
  group_by(id) %>%
  spread(t, outcome) %>%
  mutate_at(vars(-rn, -id), lag) %>%
  fill(-rn, -id)

# A tibble: 10 x 7
# Groups:   id [2]
      id    rn outcome_t1 outcome_t2 outcome_t3 outcome_t4 outcome_t5
   <int> <int>      <int>      <int>      <int>      <int>      <int>
 1     1     1         NA         NA         NA         NA         NA
 2     1     2         10         NA         NA         NA         NA
 3     1     3         10         20         NA         NA         NA
 4     1     4         10         20         30         NA         NA
 5     1     5         10         20         30         40         NA
 6     2     6         NA         NA         NA         NA         NA
 7     2     7         20         NA         NA         NA         NA
 8     2     8         20         30         NA         NA         NA
 9     2     9         20         30         40         NA         NA
10     2    10         20         30         40         40         NA
2

We can use data.table methods for this. Convert the 'data.frame' to 'data.table' (setDT(df1)), grouped by 'id', loop through the 'outcome', replicate the elements with the specifying the sequence from 1:.N and .N:1 with NA as padding, then join with the original dataset on the 'id' and 't' columns

library(data.table)
df2 <- setDT(df1)[, Map(function(x, y, z) rep(c(NA, x), 
             c(y, z)), outcome, 1:.N, .N:1), id][, t := rowid(id)]
out <- df2[df1, on  = .(id, t)]
setcolorder(out, c(1, 7, 8, 2:6))
setnames(out, 4:ncol(out), paste0("outcome_t", 1:5))
out
#    id t outcome outcome_t1 outcome_t2 outcome_t3 outcome_t4 outcome_t5
# 1:  1 1      10         NA         NA         NA         NA         NA
# 2:  1 2      20         10         NA         NA         NA         NA
# 3:  1 3      30         10         20         NA         NA         NA
# 4:  1 4      40         10         20         30         NA         NA
# 5:  1 5      40         10         20         30         40         NA
# 6:  2 1      20         NA         NA         NA         NA         NA
# 7:  2 2      30         20         NA         NA         NA         NA
# 8:  2 3      40         20         30         NA         NA         NA
# 9:  2 4      40         20         30         40         NA         NA
#10:  2 5      20         20         30         40         40         NA

Or an option with dcast

dcast(setDT(df1), id + t ~ paste0("outcome_t", t), 
       value.var = 'outcome')[, na.locf(.SD, na.rm = FALSE), id]

Or we can do this more compactly

library(zoo)
nm1 <- paste0("outcome_t", 1:5)
df1[nm1] <- do.call(rbind, lapply(split(df1$outcome, df1$id), 
                function(x) head(rbind(NA, na.locf((NA^!diag(x)) * x)), -1)))

Or using colCumsums

library(matrixStats)
df1[nm1] <- do.call(rbind, lapply(split(df1$outcome, df1$id), 
          function(x) colCumsums(rbind(0, diag(x)))[-length(x), ]))

data

df1 <- structure(list(id = c(1L, 1L, 1L, 1L, 1L, 2L, 2L, 2L, 2L, 2L), 
t = c(1L, 2L, 3L, 4L, 5L, 1L, 2L, 3L, 4L, 5L), outcome = c(10L, 
20L, 30L, 40L, 40L, 20L, 30L, 40L, 40L, 20L)),
 class = "data.frame", row.names = c(NA, -10L))

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.