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 [1,] FALSE FALSE [2,] FALSE TRUE [3,] FALSE TRUE > is.nan(my.df) a b FALSE FALSE > sum(is.na(my.df))  2 > sum(is.nan(my.df))  0
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.