Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I want to create a new column that contains the average two other columns.
For example by original table (dat) looks like this:

    A   B
1   1   NaN
2   3   2
3   2   5
4   4   4
5   6   NaN
6   5   3

I now want a column C that averages A and B, so I tried the following

dat$C<-(dat$A + $dat$B)/2

But what I get is this

    A   B     C
1   1   NaN   NaN
2   3   2     2.5
3   2   5     3.5
4   4   4     4
5   6   NaN   NaN
6   5   3     4

When what I want is this

    A   B     C
1   1   NaN   1
2   3   2     2.5
3   2   5     3.5
4   4   4     4
5   6   NaN   6
6   5   3     4

So how can I calculate this new mean value column while working around the missing values in my dataset?

share|improve this question
3  
Try df$C <- rowMeans(df, na.rm = TRUE) where df is your data.frame –  dickoa Jan 23 at 22:31
    
@dickoa Thanks for the help. Unfortunately in my actual dataset I have other identifier columns that I'm not working into the mean so this doesn't work. –  melanopygus Jan 23 at 22:36
2  
Just pass the data.frame subset to rowMeans : dat$C <- rowMeans(dat[,c('A','B')], na.rm = TRUE) –  digEmAll Jan 23 at 22:38
    
@digEmAll That did it! Thanks everyone :) –  melanopygus Jan 23 at 22:39

1 Answer 1

You can also do

dat$C <- apply(dat,1,function(x) mean(na.omit(x)))

na.omit is useful to know if you want to make a more complex function since na.omit is from base R while na.rm is an argument for certain functions.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.