# What is the most efficient way to replace a vector's values in a data.table's column with correlating values from another data.table?

Here's a scaled down sample of my problem. I have a data.table with a column of multiple IDs in vector form. These IDs all correspond to words in another data.table.

``````ID.table <- data.table(IDs = list(c(4, 5, 6), c(2, 3, 4)))
word.table <- data.table(ID = c(1, 2, 3, 4, 5, 6), word = c("This", "is", "a", "test", "sentence", "."))
``````

which yields

``````     IDs
1: 4,5,6
2: 2,3,4
``````

and

``````   ID     word
1:  1     This
2:  2       is
3:  3        a
4:  4     test
5:  5 sentence
6:  6        .
``````

I need to convert all the IDs in ID.table to the corresponding words in word.table, like in the following.

``````               IDs
1: test,sentence,.
2:       is,a,test
``````

I know I can do this using a for loop and looping through every vector in ID.table, but my actual table has thousands of rows, which means it runs very slowly.

``````row <- 1
for(ID.row in ID.table[, IDs]){
word.row <- word.table[ID %in% ID.row]\$word
ID.table[row] <- word.row

row <- row + 1
}
``````

Is there a more efficient way to do this?

EDIT: I made a mistake by listing sequential IDs starting from 1 in word.table. ID.table and word.table would look something more like this.

``````           IDs
1: 608,609,610
2: 606,607,608
``````

and

``````     ID     word
1:  605     This
2:  606       is
3:  607        a
4:  608     test
5:  609 sentence
6:  610        .
``````

where each row of ID.table will be a vector of sequential numbers not starting from 1, and the ID column of word.table will have not-always sequential ID numbers not starting from 1.

## 2 Answers

You can use `match` :

``````library(data.table)

ID.table[, IDs := lapply(IDs,function(x) word.table\$word[match(x,word.table\$ID)])]
ID.table

#               IDs
#1: test,sentence,.
#2:       is,a,test
``````

If you are ok with using `tidyverse` functions another option is to `unnest` the `IDs` and join with `word.table`.

``````library(dplyr)

ID.table %>%
mutate(row = row_number()) %>%
tidyr::unnest(IDs) %>%
left_join(word.table, by = c('IDs' = 'ID')) %>%
group_by(row) %>%
summarise(Ids = list(word)) %>%
select(-row)
``````

We could pass a named vector to match and replace by looping over the list column 'IDs' and assign (`:=`) the output back to IDs

``````ID.table[, IDs := lapply(IDs, function(x)
setNames(word.table\$word, word.table\$ID)[as.character(x)])]
``````

and if the IDs are in sequence, it is more easier i.e. use the IDs as a numeric index to replace the corresponding values from 'word' column

``````ID.table[, IDs := lapply(IDs, function(x) word.table\$word[x])]
ID.table
#              IDs
#1: test,sentence,.
#2:       is,a,test
``````

It may be also better to do this once without looping by `unlist`ing, replace the values, then `relist`

``````ID.table[, IDs := relist(word.table\$word[unlist(IDs)], skeleton= IDs)]
``````

NOTE: Both methods are simple and more direct and efficient

Or using a compact tidyverse method

``````library(purrr)
library(dplyr)
ID.table %>%
mutate(IDs = map(IDs, ~ word.table\$word[.x]))
#              IDs
#1: test,sentence,.
#2:       is,a,test
``````

This wouldn't change the original attribute structure of `data.table`

### Benchmarks

On a slightly bigger dataset

``````ID.table1 <- ID.table[rep(seq_len(.N), 1e6)]
ID.table2 <- copy(ID.table1)
ID.table3 <- copy(ID.table1)
ID.table4 <- copy(ID.table1)

system.time(ID.table1[, IDs := lapply(IDs, function(x)
setNames(word.table\$word, word.table\$ID)[as.character(x)])])
#user  system elapsed
# 29.971   0.492  30.264

system.time(ID.table2[, IDs := lapply(IDs, function(x) word.table\$word[x])])
#user  system elapsed
#  8.079   0.086   8.097

system.time(ID.table3[, IDs := relist(word.table\$word[unlist(IDs)], skeleton= IDs)])
# user  system elapsed
# 14.085   0.109  14.081

system.time(ID.table4 %>%
mutate(IDs = map(IDs, ~ word.table\$word[.x])))
#user  system elapsed
#  3.724   0.018   3.734
``````
• The IDs are always sequential, but I realized I made a mistake when I used 1:6 for word.table's id column. Is there a way to use the tidyverse method if the word.table's ID column was instead something like c(605, 606, 607, 608, 609, 610)? Jul 6 '20 at 2:49
• @tmressler Just use the first method as a named vector. Jul 6 '20 at 18:42