Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I need to calculate weighted means per row (6M+ rows), but it takes very long time. The column with weights is a character-field, so weighted.mean cant be used directly.

Background data:

values <- c(1,2,3,4)
grp <- c("a", "a", "b", "b")
weights <- c("{10,0,0,0}", "{0,10,0,0}", "{10,10,0,0}", "{0,0,10,0}")
DF <- data.frame(cbind(grp, weights))
DT <- data.table(DF)

string.weighted.mean <- function(weights.x) {
  tmp.1 <- na.omit(as.numeric(unlist(str_split(string=weights.x, pattern="[^0-9]+"))))
  tmp.2 <- weighted.mean(x=values, w=tmp.1)

Here is how it can be done (too slow) with data.frames:

DF$wm <- mapply(string.weighted.mean, DF$weights)

This does the job but is way too slow (hours):

DT[, wm:=mapply(string.weighted.mean, weights)]

How can the last line be rephrased to speed things up?

share|improve this question
You've got a great answer. Just to add: I struggle to think of a worse input format. If possible use list columns to store the weights as numeric vectors and for efficiency never ever iterate by row, always by column. And a matrix may be better at tasks like this than data.table. – Matt Dowle Jan 23 '13 at 5:10
up vote 6 down vote accepted
DT[, rowid := 1:nrow(DT)]
setkey(DT, rowid)
DT[, wm :={
    weighted.mean(x=values, w=na.omit(as.numeric(unlist(str_split(string=weights, pattern="[^0-9]+")))))     
}, by=rowid]
share|improve this answer
A nice way to make the rowid is to use rowid := .I – Gary Weissman Oct 1 '15 at 0:24

Since it doesn't appear that group has anything to do with the computation of the weighted mean, I tried to simplify the problem a bit.

     values <- seq(4)

# A function to compute a string of length 4 with random weights 0 or 10
     tstwts <- function()
         w <- sample( c(0, 10), 4, replace = TRUE )
         paste0( "{", paste(w, collapse = ","), "}" )

# Generate 100K strings and put them into a vector
     u <- replicate( 1e5, tstwts() )
     head(u)   # Check

# Function to compute a weighted mean from a string using values 
# as an assumed external numeric vector 'values' of the same length as
# the weights
    f <- function(x)
             valstr <- gsub( "[\\{\\}]", "", x )
             wts <- as.numeric( unlist( strsplit(valstr, ",") ) )
             sum(wts * values) / sum(wts) 

# Execute the function f recursively on the vector of weights u
    v <- sapply(u, f)

# Some checks:

On my system, for 100K repetitions,

> system.time(sapply(u, f))
   user  system elapsed 
   3.79    0.00    3.83

A data table version of this (sans groups) would be

DT <- data.table( weights = u )
DT[, wt.mean := lapply(weights, f)] )

On my system, this takes

system.time( DT[, wt.mean := lapply( weights, f )] ) user system elapsed 3.62 0.03 3.69

so expect about 35-40 s per million observations on a system comparable to mine (Win7, 2.8GHz dual core chip, 8GB RAM). YMMV.

share|improve this answer

Your Answer


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.