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make item random data

test <- matrix(runif(100, 0, 1), nrow = 20)
nr <- nrow(test)
mat = matrix(sapply(test, rbinom, n = 1, size = 1), nrow = nr)

make name random data

testvec <- cbind( paste( "A", floor( 10 * runif(20, 0, 1) ), sep="" ) )

make source data frame

dfrmORG <- data.frame( testvec, mat, c( 1:20 ) )
colnames(dfrmORG) <- c( "name", "item1", "item2", "item3", "item4", "item5", "rkey" )

duplicate name count

dfrmName <- as.data.frame( table( dfrmORG$name ) )
nrowUSR <- nrow( dfrmName )

make target data frame

finalDFRM <- data.frame( name = character(nrowUSR), item1 = numeric(nrowUSR), item2 = numeric(nrowUSR),
                          item3 = numeric(nrowUSR), item4 = numeric(nrowUSR), item5 = numeric(nrowUSR) )
finalDFRM$name <- dfrmName[,1]

logic

system.time({

for( i in ( 1 : nrow( dfrmORG ) ) ) {
    userKEY <- dfrmORG[ i, 1 ]
    finalDFRM[ c( finalDFRM$name == userKEY ), 2:6 ] <- finalDFRM[ c( finalDFRM$name == userKEY ), 2:6 ] * 0.9 + dfrmORG[ i, 2:6 ]
}

})

logic too slow, how can I make it better ?

for loop
a <- a*x + b

I need sum, by name, items

result( finalDFRM )                     data( dfrmORG )
name item1 item2 item3 item4 item5      name item1 item2 item3 item4 item5
  A0  1.71 1.539   1.0  0.90   0.0        A0     0     1     0     0     0
  A4  2.71 0.900   1.9  1.71   1.9        A0     1     1     0     0     0
                                          A0     1     0     0     1     0
                                          A0     0     0     1     0     0
                                          A4     1     0     0     1     0
                                          A4     1     1     1     1     1
                                          A4     1     0     1     0     1
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1  
If you can you explain what you are trying to achieve with this sequence of code, that might make it easier to help you. –  Simon Apr 8 '13 at 8:40
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1 Answer

Try to use sapply

sapply(1 : nrow(dfrmORG), function(i){
userKEY <- dfrmORG[ i, 1 ]
finalDFRM[ c( finalDFRM$name == userKEY ), 2:6 ] <- finalDFRM[ c( finalDFRM$name ==    userKEY ), 2:6 ] * 0.9 + dfrmORG[ i, 2:6 ]
})

This usually is a lot faster than creating a for loop.

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Have you timed it? I doubt this would be much faster than the for loop, if at all. Using vectorization might be preferred. –  Ricardo Saporta Apr 8 '13 at 8:47
    
@RicardoSaporta I shall do a system.time. Few minutes –  Sander Van der Zeeuw Apr 8 '13 at 8:48
    
@RicardoSaporta the sapply takes : user system elapsed 0.104 0.000 0.106 The for loop is only a bit slower: user system elapsed 0.108 0.000 0.110 –  Sander Van der Zeeuw Apr 8 '13 at 8:52
    
You might be interested in the packages rbenchmark and microbenchmark ;) –  Ricardo Saporta Apr 8 '13 at 12:54
    
@RicardoSaporta I will have a look at those packages :0 thanks for the tip! –  Sander Van der Zeeuw Apr 8 '13 at 13:35
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