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I have two data frames that look like this:

NAME    pvalues    index
A       0.9        1
B       0.8        2
C       0.7        3
D       0.6        4
E       0.5        5
F       0.4        6
G       0.3        7
H       0.2        8
I       0.1        9

NAME    VALUE      index
B       100        1
G       99         2
H       98         3
C       97         4
D       96         5
F       95         6
A       94         7
I       93         8
E       92         9

I want to sample elements from df.A a number of times (e.g. 100) selecting each time 4 elements and then to look which indexes of the df.B match these new data.frames, and at the end sum the index of these new data.frames.

My approach is the following;

res = list(data.frame())
for (i in 1:100){
res[[i]] = as.data.frame(sample(df.A$NAME, 4))
names(res[[i]]) <- 'NAME'

func <- function(x,y){merge(x, y, by.x=names(x)[1], by.y=names(y)[1])}
rand <- lapply(res, func, df.B)
sum.random = sapply(rand, function(x) sum(x$index))

Both data.frames are a summary of my real data (13000 rows and 4 columns), therefore, speed of the process will be important. My current approach takes a long time, I think because of the merge step.

I've also tried with data.table

dt = data.table(df.B, key='NAME')
fn = function(x){dt[x]};
rand2 = lapply(res, func)

but it is also two slow,

Any ideas for improving the code? Sure I'm missing something obvious


share|improve this question
The sampled index will always match with df2 since the index of df1 is same as index of df2. There should be unique index in df2, otherwise it doesn't make sense to solve this problem (i.e. which is not in df1). –  Metrics Sep 21 '13 at 13:59
What I want to do is sampling df1 in a random way, retrieving different NAME and then interrogate which index these NAME has in df2. For example, name A is 1 in df1 but 7 in df2 –  user2380782 Sep 21 '13 at 14:25
and then you want the sum of these index, right?Thanks for the clarification. –  Metrics Sep 21 '13 at 14:33
Yes @Metrics, that is right, any ideas? –  user2380782 Sep 21 '13 at 17:22
I have posted the answer.You can check that –  Metrics Sep 21 '13 at 17:23

2 Answers 2

up vote 2 down vote accepted

Maybe like this:

n.samp <- 4
n <- 100 

samp.names <- replicate(n, sample(df.A$NAME, n.samp))
DT.B <- as.data.table(df.B)
setkey(DT.B, NAME)
tmp <- DT.B[c(samp.names),]
tmp[, grp := rep(seq_len(n), each=n.samp) ]
sum.random <- tmp[,sum(index), by=grp]$V1

You didn't make it clear why you can't sample df.B directly. Are names not unique? If that's the case, you could use this:

samp.names <- data.table(NAME=c(samp.names), 
                         grp = rep(seq_len(n), each=n.samp), key="NAME")
tmp <- DT.B[samp.names, all=TRUE]
tmp[,sum(index, na.rm=TRUE), by=grp]$V1
share|improve this answer
could you explain in a little detail the first line samp.names <- data.table(NAME=c(samp.names), grp = rep(seq_len(n), each=n.samp), key="NAME"), many thanks –  user2380782 Sep 21 '13 at 17:22
This prepares a data.table for joining with DT.B. If NAMEs are not unique, we need to create the grouping variable before the join. And we need to set keys to join by. –  Roland Sep 21 '13 at 18:47

Try this approach and you can avoid for loop in R: (I assume sample size=3)

Data preparation


kk<-Map(function(x) x[sample(1:nrow(x),3,replace=FALSE),], mydf1a)
ll<-Map(function(x,y,z)cbind(sampleno=z,mysum=sum(x[which(x[,1] %in% y[,1]),3])),kk,mydf2a,sampleno)
  sampleno mysum
1        1    17
2        2    18
3        3    20
4        4    11
5        5    17
6        6    18
share|improve this answer

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