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I was using sum(is.na(my.df)) to check whether my data frame contained any NAs, which worked as I expected, but sum(is.nan(my.df)) did not work as I expected.

> my.df <- data.frame(a=c(1, 2, 3), b=c(5, NA, NaN))
> my.df
  a   b
1 1   5
2 2  NA
3 3 NaN
> is.na(my.df)
         a     b
> is.nan(my.df)
    a     b 
> sum(is.na(my.df))
[1] 2
> sum(is.nan(my.df))
[1] 0

Oh dear. Is there a reason for the inconsistency in behaviour? Is it for a lack of implementation, or is it intentional? What does the return value of is.nan(my.df) signify? Is there a good reason not to use is.nan() on a whole data frame?

In the documentation for is.na( ) and is.nan( ), the argument types seem the same (although they don't specifically list data frames):

is.na(): x R object to be tested: the default methods handle atomic vectors, lists and pairlists. is.nan(): x R object to be tested: the default methods handle atomic vectors, lists and pairlists.

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no ideas as to why the apparent inconsistency, but for an element by element comparison of is.nan, try apply(my.df, c(1,2), is.nan) –  Chase Aug 11 '11 at 19:00

1 Answer 1

up vote 8 down vote accepted

From ?is.nan:

All elements of logical,integer and raw vectors are considered not to be NaN, and
elements of lists and pairlists are also unless the element is a length-one numeric
or complex vector whose single element is NaN.

The columns of a data frame are technically "elements of a list", so is.nan(df) returns a vector with length equal to the number of columns of the data frame, which if TRUE only if the column contains a single NaN element:

> is.nan(data.frame(a=NaN,b=NA,c=1))
    a     b     c 

If you want behavior matching that of is.na, use apply:


The answer is 1 rather than 2 because is.nan(NA) is FALSE ...

edit: alternatively, you can just turn the data frame into a matrix:

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Thanks, for clearing that up. –  Zach Aug 11 '11 at 19:14
I'm curious why it would be implemented that way. Any idea what the common use case being targeted is? –  Zach Aug 11 '11 at 19:22
Not really. I think of is.na as a more general description of data and is.nan as a specific detector of numerical weirdness. You'd probably have to ask R-core what they were thinking ... –  Ben Bolker Aug 11 '11 at 19:56

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