# Convert named vector to list in R

Suppose I have the following named numeric vector:

``````a <- 1:8
names(a) <- rep(c('I', 'II'), each = 4)
``````

How can I convert this vector to a list of length 2 (shown below)?

``````a.list
# \$I
#  1 2 3 4
# \$II
#  5 6 7 8
``````

Note that `as.list(a)` is not what I'm looking for. My very unsatisfying (and slow for large vectors) solution is:

``````names.uniq <- unique(names(a))
a.list <- setNames(vector('list', length(names.uniq)), names.uniq)
for(i in 1:length(names.uniq)) {
names.i <- names.uniq[i]
a.i <- a[names(a)==names.i]
a.list[[names.i]] <- unname(a.i)
}
``````

• Maybe `split(a, names(a))`. Then `unname` the list's vectors. – Rui Barradas Sep 16 '17 at 8:17

Like I said in the comment, you can use `split` to create a list.

``````a.list <- split(a, names(a))
a.list <- lapply(a.list, unname)
``````

A one-liner would be

``````a.list <- lapply(split(a, names(a)), unname)
#\$I
# 1 2 3 4
#
#\$II
# 5 6 7 8
``````

EDIT.
Then, thelatemail posted a simplification of this in his comment. I've timed it using Devin King's way and it's not only simpler it's also 25% faster.

``````a.list <- split(unname(a),names(a))
``````
• No need for 2 lapply loops - `split(unname(a),names(a))` will do it. – thelatemail Sep 16 '17 at 9:21

I'd suggest looking at packages that excel at working with aggregating large amounts of data, like the `data.table` package. With `data.table`, you could do:

``````a <- 1:5e7
names(a) <- c(rep('I',1e7), rep('II',1e7), rep('III',1e7),
rep('IV',1e7), rep('V',1e7))

library(data.table)
temp <- data.table(names(a), a)[, list(V2 = list(a)), V1]
a.list <- setNames(temp[["V2"]], temp[["V1"]])
``````

Here are some functions to test the various options out with:

``````myFun <- function(invec) {
x <- data.table(names(invec), invec)[, list(V2 = list(invec)), V1]
setNames(x[["V2"]], x[["V1"]])
}

rui1 <- function(invec) {
a.list <- split(invec, names(invec))
lapply(a.list, unname)
}

rui2 <- function(invec) {
split(unname(invec), names(invec))
}

op <- function(invec) {
names.uniq <- unique(names(invec))
a.list <- setNames(vector('list', length(names.uniq)), names.uniq)
for(i in 1:length(names.uniq)) {
names.i <- names.uniq[i]
a.i <- a[names(invec) == names.i]
a.list[[names.i]] <- unname(a.i)
}
a.list
}
``````

And the results of microbenchmark on 10 replications:

``````library(microbenchmark)
microbenchmark(myFun(a), rui1(a), rui2(a), op(a), times = 10)
# Unit: milliseconds
#      expr       min        lq      mean    median       uq      max neval
#  myFun(a)  698.1553  768.6802  932.6525  934.6666 1056.558 1168.889    10
#   rui1(a) 2967.4927 3097.6168 3199.9378 3185.1826 3319.453 3413.185    10
#   rui2(a) 2152.0307 2285.4515 2372.9896 2362.7783 2426.821 2643.033    10
#     op(a) 2672.4703 2872.5585 2896.7779 2901.7979 2971.782 3039.663    10
``````

Also, note that in testing the different solutions, you might want to consider other scenarios, for instance, cases where you expect to have lots of different names. In that case, your `for` loop slows down significantly. Try, for example, the above functions with the following data:

``````set.seed(1)
b <- sample(100, 5e7, TRUE)
names(b) <- sample(c(letters, LETTERS, 1:100), 5e7, TRUE)
``````
• Wow, your function using data.table package is lightning fast! Thanks! – Devin King Sep 17 '17 at 21:09

Testing Rui Barradas' solution vs my original solution on a larger vector

``````  a <- 1:5e7
names(a) <- c(rep('I',1e7), rep('II',1e7), rep('III',1e7), rep('IV',1e7), rep('V',1e7))
``````

Rui's

``````st1 <- Sys.time()
a.list <- split(a, names(a))
a.list <- lapply(a.list, unname)
Sys.time() - st1
Time difference of 2.560906 secs
``````

Mine

``````st1 <- Sys.time()
names.uniq <- unique(names(a))
a.list <- setNames(vector('list', length(names.uniq)), names.uniq)
for(i in 1:length(names.uniq)) {
names.i <- names.uniq[i]
a.i <- a[names(a)==names.i]
a.list[[names.i]] <- unname(a.i)
}
Sys.time() - st1
Time difference of 2.712066 secs
``````

thelatemail's

``````st1 <- Sys.time()
a.list <- split(unname(a),names(a))
Sys.time() - st1
Time difference of 1.62851 secs
``````