How to improve this Algorithm?

R Version 2.11.1 32-bit on Windows 7

I get the data train.txt as below:

USER_A USER_B ACTION
1        7      0
1        8      1
2        6      2
2        7      1
3        8      2

And I deal with the data as the algorithm below:

result=matrix(0,length(unique(train_data\$USER_B)),2)
result[,1]=unique(train_data\$USER_B)
for(i in 1:dim(result)[1])
{
temp=train_data[train_data\$USER_B%in%result[i,1],]
result[i,2]=sum(temp[,3])/dim(temp)[1]
}

the result is the score of every USER_B in train_data. the score is defined as:

score of USER_B=(the sum of all the ACTION of USER_B)/(the recommend times of USER_B)

but the train_data is very large, it may take me three days to finish this program, so I come here to ask for help, could this algorithm be improved?

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My guess is that you should be able to avoid a for loop completely by vectorising your code. – Andrie Apr 13 '11 at 7:19
Some pointers on your code. No need for ; at the end of lines - R is not C! ;-) You don't need to initialise i the for() call does that for you, and likewise there is no need to increment i at the end of the loop. It is also better code to write for(i in seq_len(nrow(result))) rather than generating the sequence by hand, especially in production code. – Gavin Simpson Apr 13 '11 at 8:31
By the way, how large is your dataset - try nrow(train_data). Be careful if it gets to be more than half of the available RAM. If that happens, take a look at bigmemory and its related functions/packages: bigsplit, mwhich, and bigtabulate. – Iterator Sep 6 '11 at 23:28

Running your example, your desired result is to calculate the mean ACTION for each unique USER_B:

[,1] [,2]
[1,]    7  0.5
[2,]    8  1.0
[3,]    6  2.0

You can do this with one line of code using the ddply() function in package plyr

library(plyr)
ddply(train_data[, -1], .(USER_B), numcolwise(mean))

USER_B ACTION
1      6    2.0
2      7    0.5
3      8    1.0

Alternatively, the function tapply in base R does the same:

tapply(train_data\$ACTION, train_data\$USER_B, mean)

Depending on the size of your table, you can get an improvement in execution time of 20x or higher. Here is the system.time test for a data.frame with a million entries. Your algorithm takes 116 seconds, ddply() takes 5.4 seconds, and tapply takes 1.2 seconds:

train_data <- data.frame(
USER_A = 1:1e6,
USER_B = sample(1:1e3, size=1e6, replace=TRUE),
ACTION = sample (1:100, size=1e6, replace=TRUE))

yourfunction <- function(){
result <- matrix(0,length(unique(train_data\$USER_B)),2)
result[,1] <- unique(train_data\$USER_B);
for(i in 1:dim(result)[1]){
temp=train_data[train_data\$USER_B%in%result[i,1],]
result[i,2]=sum(temp[,3])/dim(temp)[1]
}
result
}

system.time(XX <- yourfunction())
user  system elapsed
116.29   14.04  134.33

system.time(YY <- ddply(train_data[, -1], .(USER_B), numcolwise(mean)))
user  system elapsed
5.43    1.60    7.19

system.time(ZZ <- tapply(train_data\$ACTION, train_data\$USER_B, mean))
user  system elapsed
1.17    0.06    1.25
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How about system.time(VV <- rowsum(train_data\$ACTION, train_data\$USER_B)/rowsum(rep(1L,nrow(train_data)), train_data\$USER_B))? – Marek Sep 4 '11 at 21:24

In addition to the approaches provided by @Andrie, the split() then lapply() approach is faster still:

> system.time(ZZ <- tapply(train_data\$ACTION, train_data\$USER_B, mean))
user  system elapsed
1.025   0.011   1.062
> system.time(WW <- unlist(lapply(split(train_data\$ACTION,
+                                       f = train_data\$USER_B),
+                          mean)))
user  system elapsed
0.465   0.007   0.483

sapply() is also just as quick for this problem:

> system.time(SS <- sapply(split(train_data\$ACTION, f = train_data\$USER_B),
+                          mean))
user  system elapsed
0.469   0.001   0.474
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+1 For split() then lapply() – Andrie Apr 13 '11 at 8:31
also, perhaps worth noting that, if the data are truly huge, some speed-up might be achieved by replacing mean in the above with function(x) sum(x) / length(x). I got about a 0.04 second speed-up over the solution shown in my answer, but if the loop really takes 3 days (!?), eking out a little extra efficiency might be useful? – Gavin Simpson Apr 13 '11 at 8:34

@gavin has already demonstrated the high performance when using a combination of split and lapply.

The package data.table offers a further noticeable performance increase of ~75%

library(data.table)
system.time({
VV <- as.data.table(train_data)[, list(ACTION=mean(ACTION)), by=USER_B]
})

user  system elapsed
0.15    0.02    0.17

system.time(WW <- unlist(lapply(split(train_data\$ACTION, f = train_data\$USER_B),mean)))

user  system elapsed
0.61    0.02    0.63

all(WW==VV\$ACTION)
[1] TRUE

The data.table package is available at CRAN and has website on r-forge

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Please see the data.table wiki for further improvements on that timing; e.g., use .Internal(mean). Also, that 0.17 is timing the as.data.table(), too, which isn't required if it's a data.table in the first place. – Matt Dowle May 9 '11 at 16:24

You can try at tapply: