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I am trying to calculate the mean of each row in my data frame. There are zeros in each row and I want to exclude these from calculation. I do not want to remove the entire row but only the zeros and calculate the mean of remaing values in each row. If row has all zero values than result should be Zero.

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up vote 12 down vote accepted

How about

nzmean <- function(x) {
    if (all(x==0)) 0 else mean(x[x!=0])
}
apply(mydata,1,nzmean)

?

It occurs to me that it might be marginally faster to do

nzmean <- function(x) {
    zvals <- x==0
    if (all(zvals)) 0 else mean(x[!zvals])
}

i.e. try to avoid doing the comparison of x with zero twice.

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+1 Snap. I'll delete my answer. – Andrie Sep 25 '12 at 13:09
    
@Ben Bolker Thanks for the help.. – maria riaz Sep 25 '12 at 13:42
    
if it answers your question, you can click on the check mark to accept the answer ... – Ben Bolker Sep 25 '12 at 13:43

Or what you could do is assign NA to zero, which is effectively what you want to do. Some sample data:

spam = matrix(runif(100), 10, 10)
spam[1,2] = 0
spam[4,3] = 0
spam[10,] = 0
spam[spam == 0] <- NA

and use rowMeans, the ifelse is to check for rows that are entirely NA. The na.rm argument is important here:

mean_values = rowMeans(spam, na.rm = TRUE)
mean_values = ifelse(is.na(mean_values), 0, mean_values)
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2  
this is probably (?) faster than my solution for very large data sets. – Ben Bolker Sep 25 '12 at 13:43
1  
I also like using NA conceptually, it makes it clear 0 is not a valid number. – Paul Hiemstra Sep 25 '12 at 14:10

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