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I've used is.finite() for vectors, matrices, etc., and it works well. What I'm puzzled about is why it seems to return FALSE for data frames and lists.

For instance, the following example:

m <- matrix(0, 3, 3)
d <- as.data.frame(m)

is.finite(m)
     [,1] [,2] [,3]
[1,] TRUE TRUE TRUE
[2,] TRUE TRUE TRUE
[3,] TRUE TRUE TRUE

is.finite(d)
   V1    V2    V3 
FALSE FALSE FALSE 

Fairly naturally, it has the same behavior for lists.

I can understand if a function doesn't work for a particular type of object (e.g. data frames). Other than the trivial case ("a stopped clock is right twice a day" --> a matrix with non-finite values), I can't see a case where is.finite() should return anything meaningful for a data frame or a list. I'd expect an error instead of FALSE, or else expect it to coerce the input to, say, a matrix, before applying the function.

The question: is there some way to use is.finite() in a meaningful way with data frames (and lists), or is there something about its behavior for which it makes more sense to return FALSE than an error?


Note 1: By the way, this is in the documentation:

 All elements of types other than logical, integer, numeric and complex vectors
 are false.  Complex numbers are finite if both the real and imaginary parts are.

So, to clarify the question: why return a false, rather than an error? The effect is that one has to add type checking outside of a call to is.finite().

Note 2: Just to address a usage case: I was considering using is.na(), is.nan(), and is.infinite() for checking some numerical anomalies, and decided that is.finite() would do the trick, until I realized that it does not behave in the same was for data frames as is.na(). This discrepancy was unexpected.


Update (2011-11-01): R 2.14.0 has been released and its NEWS file reports: The default methods for is.finite(), is.infinite() and is.nan() now signal an error if their argument is not an atomic vector. Thanks, R-Core gods! (NB: Kohske earlier reported this would be the case, as stated in the development version. The news is that now it is this is now the release version.)

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1  
When using with list, is.na is elementwise, while is.nan, is.inifinite, is.finte is not. NA is special since the value is missing. Other three, nan, finite, and infinite is description about the existing value. NA is not a mathematical concept, while other three are relevant to arithmetic operation in computing. –  kohske Oct 12 '11 at 2:11
    
@kohske Can you submit that as an answer? I believe that is correct. I had not looked for element-wise properties. I also corrected a mistake about is.nan. FWIW, is.finite() passes to a C99 function (as mentioned in documentation), so, as you suggest, the only R-specific checking is done by is.na(). –  Iterator Oct 12 '11 at 2:15
1  
Mistake, if x is list, is.na(x) and is.nan(x) behave in a similar way. if x is data.frame, the behaviors are different. –  kohske Oct 12 '11 at 2:26
    
@kohske: Aha, I remember that lists are what I'd initially tested to see is.nan behave that way. There are lots of little gotchas here. –  Iterator Oct 12 '11 at 2:28
    
I think the distinction that "works" is between is methods that test mode-ism which are vector-wise and other methods that test element-wise aspects. –  BondedDust Oct 12 '11 at 2:52
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2 Answers 2

up vote 3 down vote accepted

You are passing a vector of list to a function that is documented to deliver expected results with vectors of logical, integer, numeric and complex elements and to return FALSE with anything else. You should be doing something like this:

> sapply( d, is.finite)
       V1   V2   V3
[1,] TRUE TRUE TRUE
[2,] TRUE TRUE TRUE
[3,] TRUE TRUE TRUE

(BTW: dataframes are just lists with extra attributes.)

It might be helpful to compare the results to how is.nan behaves. Both is.nan and is.finite are element-wise features. Also look at how tests for mode (which is not what is.finite or is.nan test) offer. These give list-wise results for is.character, is.numeric, and is.logical.

> sapply(d, is.character)
   V1    V2    V3 
FALSE FALSE FALSE 
share|improve this answer
    
This seems to be a good workaround, it could be wrapped as my.is.finite(), but the underlying question (which I've attempted to clarify) is whether the FALSE is reasonable for something that seems to be an extension of functions like is.na. –  Iterator Oct 12 '11 at 2:06
    
I think that it is at this point a philosophic question. The function behave as documented, so you will need to argue any changes in the "court" of R-Core at the venue of the r-devel mailing list. There's nothing we can do here to offer you satisfaction. –  BondedDust Oct 12 '11 at 2:10
1  
I try not to disturb the R-Core gods. :) Btw, take a look at Kohske's comment - the answer seems to be the underlying elementwise approach; this, plus the outsourcing to a C99 function, seems to explain the different behaviors. As for FALSE, I suppose one can blame the C code. To get element-wise results, your sapply seems to be the right way to go. –  Iterator Oct 12 '11 at 2:26
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I don't really know why it wouldn't return an error. Unfortunately, is.finite(as.numeric(d)) returns an error (Error: (list) object cannot be coerced to type 'double'). So, the only thing that occurs to me is to iterate through the columns (which do work correctly with is.finite()) like so:

df.is.finite=function(d)
{
  for (i in 1:ncol(d))
  {
    if(!(all(is.finite(d[,i]))))
    {
      return(FALSE)
    }
  }
  return(TRUE)
}

If you want to use something like this, you'll probably want to add some input checking to make sure that the input is a data frame, etc, etc. Also, this function only returns a single boolean value. If you want it to return a data frame of corresponding boolean values, then feel free to adjust accordingly.

share|improve this answer
    
Thanks for the help. By the way, is.finite(as.matrix(d)) should do the trick, rather than as.numeric. Your answer could then be extended as all(is.finite(as.matrix(d))). I'm particularly focused on why I need to wrap this in the first place. :) Returning is.finite(as.matrix(d)) or @DWin's sapply method are how I expect to wrap a solution, but the inconsistency piqued my interest. –  Iterator Oct 12 '11 at 2:10
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