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Here's a simple data frame with a missing value:

M = data.frame( Name = c('name','name'), Col1 = c(NA,1) , Col2 = c(1,1))

When I apply aggregate to M this way:

aggregate(.~Name, M, FUN=sum, na.rm=TRUE)

the result is:

RowName Col1 Col2
name    1    1

So the entire first row is ignored. But if I do

aggregate(M[,2:3], by=list(M$Name), FUN=sum, na.rm=TRUE)

the result is

Group.1 Col1 Col2
name    1    2

So only the (1,1) entry is ignored.

This caused a major debugging headache in one of my codes, since I thought these two calls were equivalent. Is there a good reason why the "formula" entry method is treated differently?

Thanks.

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2 Answers

up vote 5 down vote accepted

Good question, but in my opinion, this shouldn't have caused a major debugging headache because it is documented quite clearly in multiple places in the manual page for aggregate.

First, in the usage section:

## S3 method for class 'formula'
aggregate(formula, data, FUN, ...,
          subset, na.action = na.omit)

Later, in the description:

na.action: a function which indicates what should happen when the data contain NA values. The default is to ignore missing values in the given variables.


I can't answer why the formula mode was written differently---that's something the function authors would have to answer---but using the above information, you can probably use the following:

aggregate(.~Name, M, FUN=sum, na.rm=TRUE, na.action=NULL)
#   Name Col1 Col2
# 1 name    1    2
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-1 for the first sentence (sure it looks easy now that you know exactly what you're looking for, but this would be smth quite non-trivial to find irl) –  eddi May 30 '13 at 19:57
1  
@eddi, no problem. I know from your chat and comment histories that you like functions to work like you want them to rather than how they are documented, and you are entirely open to that opinion. –  Ananda Mahto May 30 '13 at 20:00
1  
@eddi -- Really, a downvote for that?? I think Ananda makes a worthwhile point there... Carefully reading the help docs, sooner rather than later, is a very good habit to learn, and will save many headaches down the road! –  Josh O'Brien May 30 '13 at 20:00
    
@AnandaMahto - haha, rather I like functions to be consistent across different use cases; but I elaborated more on the -1 above - it has more to do with you thinking that this is easy to find, just because there is mention of this (again, inconsistent) behavior in the manual –  eddi May 30 '13 at 20:05
4  
@eddi -- Sounds like you'd actually like to downvote the author of aggregate.formula ;) But, given that methods sometimes do use inconsistent defaults, where else than the manual should they be documented? The positive value of Ananda's comment is that it reminds the OP (and others) that, in this inconsistent world of ours, reading the manual saves headaches! –  Josh O'Brien May 30 '13 at 20:14
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If you want the formula version to be equivalent try this:

M = data.frame( Name = rep('name',5), Col1 = c(NA,rep(1,4)) , Col2 = rep(1,5))
aggregate(. ~ Name, M, function(x) sum(x, na.rm=TRUE), na.action = na.pass)
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+1, but anonymous function not required: aggregate(.~Name, M, FUN=sum, na.rm=TRUE, na.action="na.pass") works too. –  Ananda Mahto May 30 '13 at 20:05
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