# How to vectorize R strsplit?

When creating functions that use `strsplit`, vector inputs do not behave as desired, and `sapply` needs to be used. This is due to the list output that `strsplit` produces. Is there a way to vectorize the process - that is, the function produces the correct element in the list for each of the elements of the input?

For example, to count the lengths of words in a character vector:

``````words <- c("a","quick","brown","fox")

> length(strsplit(words,""))
[1] 4 # The number of words (length of the list)

> length(strsplit(words,"")[[1]])
[1] 1 # The length of the first word only

> sapply(words,function (x) length(strsplit(x,"")[[1]]))
a quick brown   fox
1     5     5     3
# Success, but potentially very slow
``````

Ideally, something like `length(strsplit(words,"")[[.]])` where `.` is interpreted as the being the relevant part of the input vector.

-

In general, you should try to use a vectorized function to begin with. Using `strsplit` will frequently require some kind of iteration afterwards (which will be slower), so try to avoid it if possible. In your example, you should use `nchar` instead:

``````> nchar(words)
[1] 1 5 5 3
``````

More generally, take advantage of the fact that `strsplit` returns a list and use `lapply`:

``````> as.numeric(lapply(strsplit(words,""), length))
[1] 1 5 5 3
``````

Or else use an `l*ply` family function from `plyr`. For instance:

``````> laply(strsplit(words,""), length)
[1] 1 5 5 3
``````

Edit:

In honor of Bloomsday, I decided to test the performance of these approaches using Joyce's Ulysses:

``````joyce <- readLines("http://www.gutenberg.org/files/4300/4300-8.txt")
joyce <- unlist(strsplit(joyce, " "))
``````

Now that I have all the words, we can do our counts:

``````> # original version
> system.time(print(summary(sapply(joyce, function (x) length(strsplit(x,"")[[1]])))))
Min. 1st Qu.  Median    Mean 3rd Qu.    Max.
0.000   3.000   4.000   4.666   6.000  69.000
user  system elapsed
2.65    0.03    2.73
> # vectorized function
> system.time(print(summary(nchar(joyce))))
Min. 1st Qu.  Median    Mean 3rd Qu.    Max.
0.000   3.000   4.000   4.666   6.000  69.000
user  system elapsed
0.05    0.00    0.04
> # with lapply
> system.time(print(summary(as.numeric(lapply(strsplit(joyce,""), length)))))
Min. 1st Qu.  Median    Mean 3rd Qu.    Max.
0.000   3.000   4.000   4.666   6.000  69.000
user  system elapsed
0.8     0.0     0.8
> # with laply (from plyr)
> system.time(print(summary(laply(strsplit(joyce,""), length))))
Min. 1st Qu.  Median    Mean 3rd Qu.    Max.
0.000   3.000   4.000   4.666   6.000  69.000
user  system elapsed
17.20    0.05   17.30
> # with ldply (from plyr)
> system.time(print(summary(ldply(strsplit(joyce,""), length))))
V1
Min.   : 0.000
1st Qu.: 3.000
Median : 4.000
Mean   : 4.666
3rd Qu.: 6.000
Max.   :69.000
user  system elapsed
7.97    0.00    8.03
``````

The vectorized function and `lapply` are considerably faster than the original `sapply` version. All solutions return the same answer (as seen by the summary output).

Apparently the latest version of `plyr` is faster (this is using a slightly older version).

-
Thanks Shane, but I'm not getting the same results from what I'm doing. Its an implementation of the Verhoeff check digit scheme. I've modified my function to be compatible with the above implementations, but with an input of a 100,000 long vector, I'm getting a list of 8 elements from the first and a vector of 8 elements from the second (8 is the most likely length of the vector elements). – James Jun 16 '10 at 15:50
@James: Then I would imagine that there must be something else going on with your function. As you can see above, I just tested this on a vector with over 270k records and got the same results from each. You might try providing more of your code or else providing some of your data. – Shane Jun 16 '10 at 15:57
Incidentally, I just installed plyr version 0.1.9 in R 2.11.1 and had similar timings as in the above. – Shane Jun 16 '10 at 15:57
@Shane: Yes, I mistakenly indexed the list when I called it. It works now, but the timings for lapply are not much better than sapply. The algorithm needs to work through the split digits in order, so maybe that is causing the problem. – James Jun 16 '10 at 16:08
The plyr slowness is fixed in the devel version - but plyr is generally more useful when dealing with more complex problems where the times of individual applications dominates. – hadley Jun 16 '10 at 19:00