# Removing NAs when multiplying columns

This is a really simple question, but I am hoping someone will be able to help me avoid extra lines of unnecessary code. I have a simple dataframe:

Df.1 <- data.frame(A = c(5,4,7,6,8,4),B = (c(1,5,2,4,9,1)),C=(c(2,3,NA,5,NA,9)))


What I want to do is produce an extra column which is the multiplication of A, B and C, which I will then cbind to the original dataframe.

So, I would normally use:

attach(Df.1)
D<-A*B*C


But obviously where the NAs are in column C, I get an NA in variable D. I don't want to exclude all the NA rows, rather just ignore the NA values in this column (and then the value in D would simply be the multiplication of A and B, or where C was available, A*B*C.

I know I could simply replace the NAs with 1s, so the calculation remains unchanged, or use if statements, but I was wodnering what the simplist way of doing this is?

Any ideas?

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How about D<- A*B*(C*!is.na(C) + 1*is.na(C)) , which is a sneaky way around using if . – Carl Witthoft Mar 13 '12 at 11:21
That would be great but I am afraid @CarlWitthoft that line of code doesn't work. – KT_1 Mar 13 '12 at 11:32
my apologies - I can't test/debug right now. Can you tell me what error (or bad output) resulted? – Carl Witthoft Mar 13 '12 at 13:21
@CarlWitthoft You code didn't calculate a product for any row where an NA was present. basically the same as na.omit(A*B*C). Also although not explicitly asked, this will only account for NAs in C column. Not in others. – Davy Kavanagh Mar 13 '12 at 18:12
@Davy: yep, my apologies for being dense there. – Carl Witthoft Mar 13 '12 at 21:48

You can use prod which has an na.rm argument. To do it by row use apply:

apply(Df.1,1,prod,na.rm=TRUE)
[1]  10  60  14 120  72  36

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That's really interesting @James, I have never used 'prod' before - can I ask what the '1' is used for? Also, if I have other columns in my dataset, but still only wanted to multiple A, B and C - is there a way of specifying the columns that I want it to find the product of? – KT_1 Mar 13 '12 at 11:35
@KatieT The 1 tells apply to work row-wise through the MARGIN argument. To limit the number of columns you would need to pass only the columns you want to use to apply, but this could be done inline: apply(Df.1[c("A","B","C")],1,prod,na.rm=T) – James Mar 13 '12 at 11:43
That's exactly what I wanted - thanks @James! – KT_1 Mar 13 '12 at 12:03
A related question @James... if I wanted to add the contents of those three columns instead of multiple them, is there an equivalent command to ‘prod’ that does that? – KT_1 Mar 16 '12 at 16:02
@KatieT sum. But in that case you might find that rowSums offers superior performance as you don't need to use apply with it. – James Mar 16 '12 at 16:45

As @James said, prod and apply will work, but you don't need to waste memory storing it in a separate variable, or even cbinding it

Df.1$D = apply(Df.1, 1, prod, na.rm=T)  Assigning the new variable in the data frame directly will work. > Df.1 <- data.frame(A = c(5,4,7,6,8,4),B = (c(1,5,2,4,9,1)),C=(c(2,3,NA,5,NA,9))) > Df.1 A B C 1 5 1 2 2 4 5 3 3 7 2 NA 4 6 4 5 5 8 9 NA 6 4 1 9 > Df.1$D = apply(Df.1, 1, prod, na.rm=T)
> Df.1\$D
[1]  10  60  14 120  72  36
> Df.1
A B  C   D
1 5 1  2  10
2 4 5  3  60
3 7 2 NA  14
4 6 4  5 120
5 8 9 NA  72
6 4 1  9  36

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