# How can I get the average (mean) of selected columns

I would like to get the average for certain columns for each row.

I have this data:

w=c(5,6,7,8)
x=c(1,2,3,4)
y=c(1,2,3)
length(y)=4
z=data.frame(w,x,y)


Which returns:

  w x  y
1 5 1  1
2 6 2  2
3 7 3  3
4 8 4 NA


I would like to get the mean for certain columns, not all of them. My problem is that there are a lot of NAs in my data. So if I wanted the mean of x and y, this is what I would like to get back:

  w x  y mean
1 5 1  1    1
2 6 2  2    2
3 7 3  3    3
4 8 4 NA    4


I guess I could do something like z$mean=z$x+z$y/2 but the last row for y is NA so obviously I do not want the NA to be calculated and I should not be dividing by two. I tried cumsum but that returns NAs when there is a single NA in that row. I guess I am looking for something that will add the selected columns, ignore the NAs, get the number of selected columns that do not have NAs and divide by that number. I tried ??mean and ??average and am completely stumped. ETA: Is there also a way I can add a weight to a specific column? - ## 2 Answers Here is examples: > z$mean <- rowMeans(subset(z, select = c(x, y)), na.rm = TRUE)
> z
w x  y mean
1 5 1  1    1
2 6 2  2    2
3 7 3  3    3
4 8 4 NA    4


weighted mean

> z$y <- rev(z$y)
> z
w x  y mean
1 5 1 NA    1
2 6 2  3    2
3 7 3  2    3
4 8 4  1    4
>
> weight <- c(1, 2) # x * 1/3 + y * 2/3
> z$wmean <- apply(subset(z, select = c(x, y)), 1, function(d) weighted.mean(d, weight, na.rm = TRUE)) > z w x y mean wmean 1 5 1 NA 1 1.000000 2 6 2 3 2 2.666667 3 7 3 2 3 2.333333 4 8 4 1 4 2.000000  - Thanks, this does exactly what I am looking for. I really need to study up on this magical apply command, it seems like it is a solution to everything. – thequerist Feb 28 '12 at 22:30 Try using rowMeans: z$mean=rowMeans(z[,c("x", "y")], na.rm=TRUE)

w x  y mean
1 5 1  1    1
2 6 2  2    2
3 7 3  3    3
4 8 4 NA    4

-
+1 Thanks, I normally use Extract, cannot believe I did not think of this. Gave the check to kohske for including solution to weighted also. –  thequerist Feb 28 '12 at 22:33