Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a function call WOE, that return a data fame with 1 row, and 7 columns:

WOE(inData, splitCol, range, tgtCol, adjfac)

Where inData is a data frame, splitCol, tgtCol and adjfac are numeric, range can be a single number or a 2x1 matrix, e.g. range = 10 or range = c(10, 20)

Now I would like to write a function that when the range is a n-row matrix, then the function will do WOE row by row and return a data frame that have n row and 7 columns. For now i am using a for loop with cbind:

df <- rbind(df, WOE(inData, splitCol, range[i,], tgtCol, adjfac))
for (i in 2:nrow(range)) {
  df <- rbind(df, WOE(inData, splitCol, range[i,], tgtCol, adjfac))
}

But I don't like for-loop... I want to make it simpler. So I also have tried to use mapply like this:

 mapply(t(WOR, list(inData), list(splitCol), split(range, nrow(range)), list(tgtCol), list(adjfac))

but the above line doesn't return a data frame as I want, it return a data frame of a lot of lists, which is very difficult for me to do further calculation.

Does anyone have suggestions for me to aggregate my for-loop into less lines? Thanks!

share|improve this question
1  
This will be much cleared if we actually could reproduce WOE and you included the output is a data.frame of a lot of lists a list of data.frames or a data.frame of lists? Also, why are you including t(..) in your call to mapply this would appear to be a syntax error. –  mnel Nov 22 '12 at 3:23

2 Answers 2

up vote 4 down vote accepted
do.call(rbind, lapply(1:nrow(range), function(i) WOE(inData, splitCol, range[i,], tgtCol, adjfac)))

I often use this idiom when I want precise control over how results from an "apply" operation are combined. This way I don't have to remember what the rules for automatic simplification are (i.e. sapply or mapply with simplify=TRUE).

share|improve this answer
    
oh, that is great! thanks alot! –  Kloser Cheung Nov 22 '12 at 10:38

First suppose this:

WOE = function(i) data.frame(matrix(runif(7),nrow=1))
WOE(1)
#       X1     X2     X3     X4     X5      X6     X7
# 1 0.7973 0.5489 0.8095 0.6375 0.7322 0.03601 0.3647

sapply(seq(5), function(x) WOE(x))
#    [,1]   [,2]    [,3]     [,4]    [,5]   
# X1 0.6664 0.02439 0.8753   0.0384  0.5619 
# X2 0.7818 0.1433  0.005552 0.5223  0.3665 
# X3 0.6308 0.551   0.7413   0.6464  0.3405 
# X4 0.4988 0.04422 0.8696   0.9513  0.01265
# X5 0.92   0.9563  0.4194   0.03145 0.05684
# X6 0.4526 0.07379 0.246    0.6304  0.3623 
# X7 0.6959 0.087   0.99     0.8185  0.2488 

Simple? So if according to @mnel comment below, matrix also suits you, you may act like this:

sapply(seq(2,nrow(range)), function(i) WOE(inData, splitCol, range[i,], tgtCol, adjfac))

But if you need strictly data.frame (all of the cells are not the same type) you may use this:

do.call(rbind, lapply(seq(2,nrow(range)), 
        function(i) WOE(inData, splitCol, range[i,], tgtCol, adjfac)))
share|improve this answer
    
The result is a matrix. Is this what the OP wants (this is rather unclear). data.frame to matrix conversion will only work nicely if all columns are numeric (or a single type) –  mnel Nov 22 '12 at 3:35
    
@mnel Thanks, updated. Seems OK? –  Ali Nov 22 '12 at 3:43
    
Thank you! I do need a data frame –  Kloser Cheung Nov 22 '12 at 10:42

Your Answer

 
discard

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.