Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Here is a sample data frame df and a vector s:

x1 <- c(12:4, 5:8, NA, NA)
x2 <- c(15:8, 9:15)
df <- data.frame(x1, x2)
s <- c(9,8)

Now I want to delete the values in each column before the row numbers given in s which works with

df1 <- df[s[1]:nrow(df[1]), 1]

for a single column. But I can't get it to work for the whole data frame. I've tried the following (and various other functions):

rec  <- function(x){df[s[x]:nrow(df[x]), x]}
df1 <- lapply(df, rec)

But I'm always getting errors like that:

Error in `[.data.frame`(df, s[x]:nrow(df[x]), x) : undefined columns selected

Don't know where the problem is. Any suggestions?

share|improve this question
So do you want to delete the first 9 rows in column 1 and the first 8 in column 2? If so do you want NA in column 1 row 1 (previously row 8). Or do you just want to eliminate the first 9 rows in all columns? –  John Paul Sep 20 '13 at 12:22
You provide the whole data.frame as x in the lapply-call, instead of the column number. Try: lapply(1:ncol(df), rec), but this returns a list with the separate vectors of different lenght, so it is not possible to put those in one data.frame. It might be helpful to show your desired output. –  Rob Sep 20 '13 at 12:23
@Rob This is exactly what I need, thanks. I don't really care if df is a list or data frame. But I don't completely understand where the difference is between (1:ncol(df), rec) and (df, rec). –  Markus Sep 20 '13 at 13:51
Glad to help. With 1:ncol(df), which would in this case be 1:2, you give the column numbers that are used to subset df in your function. Filling in the whole data.frame there doesn't work, since R expects only the numbers of the rows and columns: [rownumbers,columnnumbers]. Also see ?[ The answers below also give you the same result and might provide you some more insight. –  Rob Sep 20 '13 at 14:17

3 Answers 3

Try mapply. In general I opt for it when it comes to invoke the same function against a list (the column in df) using different parameters for each item in the list:

> mapply(`[`, df, lapply(s, `:`, nrow(df)))
[1]  4  5  6  7  8 NA NA

[1]  8  9 10 11 12 13 14 15

the above applies the [ operator against each column (taken as atomic vector) and use as argument each item inside

> lapply(s, `:`, nrow(df))
[1]  9 10 11 12 13 14 15

[1]  8  9 10 11 12 13 14 15

so, the first would be df$x1[9:15], the second df$x2[8:15]. Hope it is what you want.

EDIT: sapply changed to lapply as discussed with Hadley in comments.

EDIT2: some timings to compare different approaches as suggested in comments below

df1 <- data.frame(x1 = rnorm(10000),
                  x2 = rnorm(10000))

method1 <- function(data, limits)
  mapply(`[`, data, lapply(limits, `:`, nrow(data)))

method2 <- function(data, limits)
  mapply(function(x, i) x[-(1:(i-1))], data, limits)

> identical(method1(df1, s),method2(df1, s))
[1] TRUE
> microbenchmark(method1(df1, s),method2(df1, s))
Unit: microseconds
            expr     min       lq   median       uq      max neval
 method1(df1, s) 239.250 250.1550 258.6525 273.0855  423.658   100
 method2(df1, s) 548.734 568.4585 584.3340 599.4075 1664.164   100
share|improve this answer
lapply would be more appropriate than sapply here: you're not simplifying the output. –  hadley Sep 20 '13 at 13:48
@hadley good point... it's a waste of time and not only actually! if all elements of s are the same it'll create a matrix and mapply won't work as expected... thanks. –  Michele Sep 20 '13 at 13:59
You could get rid of the sapply altogether by using function(i) df[-(1:i), ] –  hadley Sep 20 '13 at 15:32
@hadley true, but it'll be 2x slower. microbenchmark()ed with 10k row data frames. Not using anonymous function is more efficient probably. Do they get "compiled" every time mapply call them? Well.. even if it were there are only 2 column to loop through so I guess it's not eventually impacting in case. –  Michele Sep 20 '13 at 16:11
Interesting! But no compilation going on. More likely to be that negative indexing is slow. –  hadley Sep 21 '13 at 13:10
[1]  4  5  6  7  8 NA NA

[1]  8  9 10 11 12 13 14 15

If you want the dataframe:


 X1 X2
1  4  8
2  5  9
3  6 10
4  7 11
5  8 12
6 NA 13
7 NA 14
8  4 15

Note: R does recycling here since the number of elements in the X1 and X2 is not the same

share|improve this answer

tail(x,n) with negative n returns all elements of x without the first n ones.

mapply(function(a,b) tail(a, -b), df, s)
lapply(1:2, function(x) tail(df[,x], -s[x]))

EDIT(Michele): Since you want it to return a subset including the rows defined by s you'll need to increase b by one.

mapply(function(a,b) tail(a, -b+1), df, s)
share|improve this answer
Won't this return a list? Although it is not completely clear, it seems that the OP wants a data.frame output. That said, the use of tail() is clever. –  John Paul Sep 20 '13 at 13:09
@JohnPaul if wants a data.frame, but I doubt it, he would need to fill the gaps, because the output is different length vectors. The above was also slightly incorrect. –  Michele Sep 20 '13 at 13:20

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.