Been rummaging through previously answered questions, but can't find one in-line with what I'm trying to do.

Here is a simplified version of what I have:

Names = c("Andy", "Bill", "Carl", "Dave")
Letters = c("A", list(c("A", "B", "C")), list(c("B", "C")), "B")
DATA = as.data.frame(cbind(Names, Letters))

Here is a simplified version of what I want:

Names2 = c("Andy", rep("Bill", 3), rep("Carl", 2), "Dave")
Letters2 = c("A", "A", "B", "C", "B", "C", "B")
DATA2 = as.data.frame(cbind(Names2, Letters2))

I'm sure this is simple, but it's been doing my head in.

Cheers

up vote 1 down vote accepted

The tidyr function unnest can help you here. The only problem you have is that your DATA frame contains a vector-of-lists in each column. If we convert the Names column to a character vector first you can unnest the Letters lists:

Names <- c("Andy", "Bill", "Carl", "Dave")
Letters <- c("A", list(c("A", "B", "C")), list(c("B", "C")), "B")
DATA <- as.data.frame(cbind(Names, Letters))

DATA
  Names Letters
1  Andy       A
2  Bill A, B, C
3  Carl    B, C
4  Dave       B

str(DATA)
'data.frame':   4 obs. of  2 variables:
 $ Names  :List of 4
  ..$ : chr "Andy"
  ..$ : chr "Bill"
  ..$ : chr "Carl"
  ..$ : chr "Dave"
 $ Letters:List of 4
  ..$ : chr "A"
  ..$ : chr  "A" "B" "C"
  ..$ : chr  "B" "C"
  ..$ : chr "B"

So we convert the Names

DATA %>%
  dplyr::mutate(Names = unlist(Names)) %>%
  unnest()

  Names Letters
1  Andy       A
2  Bill       A
3  Bill       B
4  Bill       C
5  Carl       B
6  Carl       C
7  Dave       B
  • Thanks for that, cheers (+1). By the way, just out of curiosity, I know that unnest acts row-wise (as requested), but what would act in a like-manner by unnesting each element into its own column? (with NAs being imputed where the lists being unpacked were of different lengths). I've had to work around this in the past, so if a simple dplyr friendly way of doing this exists it would be good to know. Thanks again – user10022403 Nov 13 at 15:42
  • I'm not sure. Are you wanting a separate column for each value? You could tidyr::unnest and then tidyr::spread – Russ Hyde Nov 13 at 15:46

Maybe you are like me and like to use the base R functionality.

do.call(
    rbind, c(apply(DATA, 1, function(x){cbind.data.frame(Names = x[1],Letters = unlist(x[2]))}),  make.row.names = FALSE)
)

#  Names Letters
#1  Andy       A
#2  Bill       A
#3  Bill       B
#4  Bill       C
#5  Carl       B
#6  Carl       C
#7  Dave       B

just as an addition using data.table.

data.table::setDT(DATA)[, .(Letters = unlist(Letters)), by = .(Names = unlist(Names))]

#   Names Letters
#1:  Andy       A
#2:  Bill       A
#3:  Bill       B
#4:  Bill       C
#5:  Carl       B
#6:  Carl       C
#7:  Dave       B

This is another logical simple method. You should make two vectors, one for Names and another for Letters.

vecName=vector()
vecLetter=vector()

Now you should traverse all the names in DATA using outer loop. In the inner loop, you should separate letters and fill both(vecName and vecLetter) vectors.

r=1
for(i in 1:nrow(DATA))
{
  for(j in 1:length(DATA$Letters[[i]]))
  {
        vecName[r]=DATA$Names[[i]]
        vecLetter[r]=DATA$Letters[[i]][j]
        r=r+1
  }
}

Finaly, combine both vectors and make another data frame.

df=data.frame(vecName,vecLetter)

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