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I have a data.frame with 2 columns representing interaction between 2 genes. An example of how looks the data.frame:

V1       V2
A1BG     A1BG
A1CF     A1CF

I want to split the data.frame based on values from first column, I've used the following command:

out <- split(df, df$V1)

The desired output should be:



However, the process using split takes such a long time since my file is too big (around 200,000 rows)

Many thanks

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Make sure your columns aren't factors. Load your file or create your data.frame with the parameter stringsAsFactors=FALSE. Then do: split(df$V2, df$V1). It should be fast. I tried on a 1e5 data.frame and it finishes in 0.07 seconds. –  Arun May 14 '13 at 16:48
@Arun the difference is that you are using split.default whereas split.data.frame is called for the OP's data. Internally, split.default has to create a factor if f isn't one so I don't see how it can be faster when providing a non-factor f. –  Gavin Simpson May 14 '13 at 17:06
When I try this character takes longer than factor in both cases: char <- rep(c("a", "b"), each = 10000); fac <- factor(char); library(rbenchmark); benchmark(split(char, char), split(fac, fac)); DF.char <- data.frame(char, stringsAsFactors = FALSE); DF.fac <- data.frame(fac); benchmark(split(DF.char, char), split(DF.fac, fac)) –  G. Grothendieck May 14 '13 at 17:11
@JoshO'Brien Nope, I don't think this has anything to do with factor f, which is what Arun was suggesting. –  Gavin Simpson May 14 '13 at 17:11
@Arun I see what you mean now - it was totally unclear that you were referring to the variable to be split in your original comment. Your follow-up comment used data with x and y but showed usage code with df$V1 and df$V2 without indication as to which was x and y. I think I must have tested the opposite of what you did. Hence I fully agree that argument x, if a factor, is not as quick as non-factor x. I thought we were discussing argument f. –  Gavin Simpson May 14 '13 at 20:43

1 Answer 1

up vote 5 down vote accepted

To speed this up, especially if you only need df$V2 split apart on the basis of df$V1, use only that vector in the call to split not the entire data frame df. E.g:

## Dummy data
df <- read.table(text = "V1       V2
A1BG     A1BG
A1CF     A1CF
A1CF     KHSRP", header = TRUE)
## make it big!
df <- with(df, cbind.data.frame(V1 = rep(V1, length.out = 1e5),
                                V2 = rep(V2, length.out = 1e5)))
# time it
system.time(sp1 <- split(df, df$V1))

system.time(sp2 <- split(df$V2, df$V1))

> system.time(sp1 <- split(df, df$V1))
   user  system elapsed 
  0.024   0.000   0.016 
> system.time(sp2 <- split(df$V2, df$V1))
   user  system elapsed 
  0.008   0.000   0.005

This is on an example with few levels though. With very many levels, the inefficiency of splitting the entire data frame starts to weigh heavily on compute time, e.g. for a factor with around 10000 levels:

df2 <- data.frame(V1 = factor(sample(10000, 1e5, replace = TRUE)),
                  V2 = rnorm(1e5))

system.time(sp3 <- split(df2, df2$V1))

system.time(sp4 <- split(df2$V2, df2$V1))

> system.time(sp3 <- split(df2, df2$V1))
   user  system elapsed 
  5.332   0.000   4.216 
> system.time(sp4 <- split(df2$V2, df2$V1))
   user  system elapsed 
  0.008   0.000   0.005

The reason for this is that in the split(df, df$V1) case, the split.data.frame method is called, which does an lapply() on a vector 1:nrow(df) itself split into groups by f (df$V2), and applies a function (function(ind) x[ind, , drop = FALSE])) to each component. Hence as the number of levels grows large, the number of function calls to that anonymous function grows and inflates the compute time.

In the split(df$V2, df$v1) case the split.default method is used, which if called with factor f essentially only needs to call the fast C implementation of split. As such it doesn't incur any of the overhead of calling the anonymous function nor the repeated calls to [.

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thanks for your explanation @Gavin Simpson, my data has a lot of levels...Great explanation!!!!! –  user2380782 May 14 '13 at 17:29

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