# Weighted Average in R using NA weights

`````` a=c(1,2,NA,4)
b=c(10,NA,30,40)
weighted.mean(a,b,na.rm = T)
``````

The above code gives me NA as the answer, I think na.rm only ignores the NA values in vector a and not b. How can I ignore the NA in vector b or weights to be specific. I just cannot change the NA to 0, I know that would do the trick but looking for a tweak in the formula itself.

• I don't think there's a pre-made function. You'll just have to do it by manually subsetting the vectors (or write your own function). – Ryan C. Thompson Oct 26 '16 at 17:58
• You could edit the source code for `weighted.mean` and make your own custom function. – Zach Oct 26 '16 at 18:01
• `with(na.omit(data.frame(a, b)), weighted.mean(a, b))` – G. Grothendieck Oct 26 '16 at 18:11

This is the function I ended up writing to solve this problem:

``````weighted_mean <- function(x, w, ..., na.rm = FALSE){

if(na.rm){

df_omit <- na.omit(data.frame(x, w))

return(weighted.mean(df_omit\$x, df_omit\$w, ...))

}

weighted.mean(x, w, ...)
}
``````

I adapted Mhairi's code to not use data.frame nor na.omit:

``````weighted_mean = function(x, w, ..., na.rm=F){
if(na.rm){
x1 = x[!is.na(x)&!is.na(w)]
w = w[!is.na(x)&!is.na(w)]
x = x1
}
weighted.mean(x, w, ..., na.rm=F)
}
``````

It's really surprising that R builtin weighted.mean na.rm=T doesn't handle NA weights. Just wasted a few hours discovering that.