I have a large matrix, for each cell I want to calculate the average of the numbers falling in the column and row of that specific cell.

As the matrix contains NA values and I'm not interested in those I skip them

How could I speed-up this and do it better?


mtx <- matrix(seq(1:25), ncol = 5)
mtx[2,3] <- NA

mean.pos <- mtx
for(i in 1:dim(mtx)[1]){

  for(j in 1:dim(mtx)[2]){


    } else {
      row.values <- mtx[i, !is.na(mtx[i,])]

      # -- Remove mtx[i,j] value itself to not count it twice
      row.values <- row.values[-which(row.values == mtx[i,j])[1]]

      col.values <- mtx[!is.na(mtx[,j]),j]
      mean.pos[i,j] <- mean(c(row.values, col.values), na.rm = T)
  • Your code says that you want to remove values on the row with the same value as your particular cell, but (1) you don't explain that, is that right? (2) Caution, equality of floating point is relative (and not always what you think it should be), see stackoverflow.com/q/9508518/3358272. After reading that, please clarify your question. (I suspect that either rowMeans/colMeans or a couple of less-trivial calls to apply will do what you need.) – r2evans May 30 at 17:11
  • Yes sorry, I want to take the average of the column-row. the way For the way I'm doing it I remove for the row vectors, otherwise when I calculate the mean I would be couning that cell twice. – HeyHoLetsGo May 30 at 17:22

This does it without explicitly looping through the elements.

num <- outer(rowSums(mtx, na.rm = TRUE), colSums(mtx, na.rm = TRUE), "+") - mtx
not_na <- !is.na(mtx)
den <- outer(rowSums(not_na), colSums(not_na), "+") - 1
result <- num/den

# check
identical(result, mean.pos)
## [1] TRUE

If there were no NAs then it could be simplified to:

(outer(rowSums(mtx), colSums(mtx), "+") - mtx) / (sum(dim(mtx)) - 1)
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