# Replace NA values by row means

I want to replace my NA values from a matrix acquired by :

``````read.table(…)
``````

Those values should be the mean of the corresponding row.

I.e, the following row of the table :

``````1 2 1 NA 2 1 1 2
``````

would become

``````1 2 1 1.43 2 1 2
``````

Thank you.

• Why would you want to do this row-wise? Just checking you aren't mixing up variables with objects/samples. Usually one does this column-wise, computing the mean for each variable and using that to replace `NA` within the variable. Aug 2, 2011 at 21:21
• Also, `read.table()` returns a data.frame. Are you talking about a data frame or a proper matrix? Aug 2, 2011 at 21:21
• @GavinSimpson One reason for this would be in questionnaire data with repeated questions for use in a measurement. The means of the other questions would be used to substitute missing data. Dec 12, 2013 at 4:52

Here's some sample data.

``````m <- matrix(1:16, nrow=4)
m[c(1,4,6,11,16)] <- NA
``````

And here's how I'd fill in missings with the row means.

``````k <- which(is.na(m), arr.ind=TRUE)
m[k] <- rowMeans(m, na.rm=TRUE)[k[,1]]
``````

Your data will be in a `data.frame`; you'll have to convert to a matrix first using `as.matrix`. You may or may not want to leave it in that format; to convert back use `as.data.frame`.

• Thank you. However I get the following error message using your code : Error in `[<-.data.frame`(`*tmp*`, k, value = c(3.67857142857143, 3.34375, : only logical matrix subscripts are allowed in replacement Aug 3, 2011 at 7:28
• Make your data frame into a matrix first (`as.matrix`), then do it, then convert back (`as.data.frame`). Aug 3, 2011 at 17:37
• As of the time of writing this comment, this solution works for data frames without conversion. Dec 12, 2013 at 4:51
``````x[is.na(x)] <- mean(x, na.rm=TRUE)  # for vectors or for a matrix as a whole

t( apply(x, 1, function(xv) { xv[is.na(xv)] <-
mean(xv, na.rm=TRUE)
return(xv)}
) ) # for a row-oriented sol'n
``````
• Wouldn't this return the mean of the entire matrix? Aug 2, 2011 at 20:29
• It would. I didn't get that he wanted a row oriented solution but will put one in. Aug 2, 2011 at 20:37
``````a = c(NA, 1, 2, 3, 10)
a[which(is.na(a)==TRUE)] = mean(a,na.rm = T)
``````
• This should work, but it's unnecessarily complicated. is.na(a) returns a vector of Booleans, so the == TRUE is redundant. `which` is not necessary either, since you can index vectors either by a vector of length <= `length(a)` or by a vector of length `length(a)` containing TRUEs and FALSEs (or 0/1's which get coerced to TRUE/FALSE). Finally, avoid using T and F for TRUE and FALSE, since they can get overwritten. Aug 2, 2011 at 20:32
• I considered more, the training aspect :d Aug 2, 2011 at 20:37
• For a matrix, same problem, takes the mean of everything and replaces. Aug 2, 2011 at 20:38
• @BrandonBertelsen: Read the question again, and you're right. Aaron's got the solution using rowMeans. Aug 2, 2011 at 20:45
• @user702846: Don't mean to discourage you though! Keep at it. Aug 2, 2011 at 20:45