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I have a script that has a bunch of quality control checksums and it got caught on a dataset that had no need to remove any samples (rows) due to quality control. However, this script gave me an unexpected result of a dataframe with zero rows. With example data, why does this work:

data(iris)
##get rid of those pesky factors
iris$Species <- NULL
med <- which(iris[, 1] < 4.9)
medtemp <- iris[-med, ]
dim(medtemp)
[1] 134   4

but this returns a dataframe of zero rows:

small <- which(iris[, 1] < 4.0)
smalltemp <- iris[-small, ]
dim(smalltemp)
[1] 0 4

As does this:

x <- 0
zerotemp <- iris[-x, ]
dim(zerotemp)
[1] 0 4

It seems that the smalltemp dataframe should be the same size as iris since there are no rows to remove at all. Why is this?

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4 Answers 4

up vote 3 down vote accepted

Copied verbatim from Patrick Burns's R Inferno p. 41 (I hope this constitutes "fair use" -- if someone objects I'll remove it)

negative nothing is something

> x2 <- 1:4
> x2[-which(x2 == 3)]
[1] 1 2 4

The command above returns all of the values in x2 not equal to 3.

> x2[-which(x2 == 5)]
numeric(0)

The hope is that the above command returns all of x2 since no elements are equal to 5. Reality will dash that hope. Instead it returns a vector of length zero. There is a subtle difference between the two following statements:

x[]
x[numeric(0)]

Subtle difference in the input, but no subtlety in the difference in the output. There are at least three possible solutions for the original problem.

out <- which(x2 == 5)
if(length(out)) x2[-out] else x2

Another solution is to use logical subscripts:

x2[!(x2 %in% 5)]

Or you can, in a sense, work backwards:

x2[ setdiff(seq along(x2), which(x2 == 5)) ]
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Always good to see the R Inferno referenced and this answer means it might be a good time to review it again. –  Stedy May 27 '11 at 21:20

Instead of using which to get your indices, I would use a boolean vector and negate it. That way you can do this:

small <- iris[, 1] < 4.0
smalltemp <- iris[!small, ]
dim(smalltemp)
[1] 150   4

EDIT: I don't think a negative index of 0 (as in your case) is allowed since there is no 0th index and thus R can't exclude that index from your selection. Negative indexing can be interpreted as: "give me back all rows except those with these indices".

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Could it be that in your second example, small evaluates to 0?

Taking the zeroth element of a vector will always return the empty vector:

> foo <- 1:3
> foo
[1] 1 2 3
> foo[0]
integer(0)
> 
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It is because of the rules of what to do with an index that is zero. Only strictly positive or strictly negative indices are allowed. As [0] returns nothing, and

R> -0 == 0
[1] TRUE

Hence you get nothing where you expected it to drop nothing.

The identical(0) issue is treated as indexing by a NULL and this is documented to work as if indexing by 0 and hence the same behaviour.

This is discussed in the R Language Definition manual

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