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I have a list of functions

funs <- list(fn1 = function(x) x^2,
             fn2 = function(x) x^3,               
             fn3 = function(x) sin(x),
             fn4 = function(x) x+1)
#in reality these are all f = splinefun()

And I have a dataframe:

mydata <- data.frame(x1 = c(1, 2, 3, 2),
                     x2 = c(3, 2, 1, 0),
                     x3 = c(1, 2, 2, 3),
                     x4 = c(1, 2, 1, 2))
#actually a 500x15 dataframe of 500 samples from 15 parameters

For each of i rows, I would like to evaluate function j on each of the j columns and sum the results:

unlist(funs)
attach(mydata)
a <- rep(NA,4)
for (i in 1:4) {
     a[i] <- sum(fn1(x1[i]), fn2(x2[i]), fn3(x3[i]), fn4(x4[i]))
}

How can I do this efficiently? Is this an appropriate occasion to implement plyr functions? If so, how?

bonus question: why is a[4] NA?

Is this an appropriate time to use functions from plyr, if so, how can I do so?

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1  
@abe for the third code snippet, you need to either unlist(funs) and attach(mydata) or use funs$fn1 and mydata$x1 –  David Jan 21 '11 at 23:53
    
@David thanks for the correction, I have changed the code to reflect this- but this is exactly the messiness that I would like to avoid. –  Abe Jan 22 '11 at 0:00
2  
Well, for the bonus point, the answer is that there is no 4th element in mydata$x4 or any of the columns of that dataframe. A further comment .. simply typing unlist(funs) does nothing unless you assign the result to something. Welcome to functional programming. –  BondedDust Jan 22 '11 at 0:28
    
Note that x1[i] is a data frame, not a vector. You want x1[[i]] or x1[, 1] –  hadley Jan 22 '11 at 1:29
    
@hadley; No, x1[1] is part of an attached data.frame and it is a numeric vector of length 1. str(x1[1]) returns num 1 –  BondedDust Jan 22 '11 at 3:30

3 Answers 3

up vote 4 down vote accepted

Ignoring your code snippet and sticking to your initial specification that you want to apply function j on the column number j and then "sum the results"... you can do:

> mapply( do.call, funs, lapply( mydata, list))
     [,1] [,2]      [,3] [,4]
[1,]    1   27 0.8414710    2
[2,]    4    8 0.9092974    3
[3,]    9    1 0.9092974    3

I wasn't sure which way you want to now add the results (i.e. row-wise or column-wise), so you could either do rowSums or colSums on this matrix. E.g:

> colSums( mapply( do.call, funs,  lapply( mydata, list))
+ )
[1] 14.000000 36.000000  2.660066  8.000000
share|improve this answer
    
thanks for this help; I'll use rowSums but this is the concept that I was looking for. –  Abe Jan 22 '11 at 6:36
    
I don't understand what the last list does, isn't the second argument to do.call a list of arguments to the function? –  Abe Jan 22 '11 at 6:48
    
I edited the second expression above slightly (you don't need to do as.list ). You do need to do the lapply( mydata, list) to turn mydata into a list of lists. Then the mapply causes do.call to take each function in funs, and takes the corresponding list-member of the lapply(mydata,list), which itself is a list. –  Prasad Chalasani Jan 22 '11 at 15:54
    
i just had a chance to implement this and the system.time()$elapsed was 0.02 second, down from 2.5 s when implemented as a for loop! Thanks for your help! –  Abe Jan 24 '11 at 23:04
    
great, glad to know it helped! –  Prasad Chalasani Jan 25 '11 at 2:25

Why don't just write one function for all 4 and apply it to the data frame? All your functions are vectorized, and so is splinefun, and this will work:

fun <-  function(df)
    cbind(df[, 1]^2, df[, 2]^3, sin(df[, 3]), df[, 4] + 1)

rowSums(fun(mydata))

This is considerably more efficient than "foring" or "applying" over the rows.

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I tried using plyr::each:

library(plyr)
sapply(mydata, each(min, max))
    x1 x2 x3 x4
min  1  0  1  1
max  3  3  3  2

and it works fine, but when I pass custom functions I get:

sapply(mydata, each(fn1, fn2))
Error in proto[[i]] <- fs[[i]](x, ...) :
  more elements supplied than there are to replace

each has very brief documentation, I don't quite get what's the problem.

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