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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:

library(data.table)
library(stringr)
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?

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2  
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

2 Answers 2

up vote 5 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]
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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
     table(u)

# 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:
    head(v)
    table(v)

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)] )
head(DT)
dim(DT)

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.

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