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df2 <- data.frame(Mean = c(.5,4,2.3,1.2,3.7,3.3,.8), Numbers = "NA")


for(i in 1:length(df2$Mean)){
        if(df2$Mean[i] <= .5) {
        df2$Number[i] = 0
        }           
        else if(df2$Mean[i] > .5 & df2$Mean[i] < 1.5){
        df2$Number[i] = 1
        }
        else if(df2$Mean[i] > 1.5 & df2$Mean[i] < 2.5){
        df2$Number[i] = 2
        }
        else if(df2$Mean[i] > 2.5 & df2$Mean[i] < 3.5){
        df2$Number[i] = 3
        }
        else {
        df2$Number[i] = 4
        }
    }

This works! However when I try to make a function out of it and call the function it dosen't work. I save the function file as "df2type.txt":

type <- function(df2){
for(i in 1:length(df2$Mean)){
        if(df2$Mean[i] <= .5) {
        df2$Number[i] = 0
        }
        else if(df2$Mean[i] > .5 & df2$Mean[i] < 1.5){
        df2$Number[i] = 1
        }
        else if(df2$Mean[i] > 1.5 & df2$Mean[i] < 2.5){
        df2$Number[i] = 2
        }
        else if(df2$Mean[i] > 2.5 & df2$Mean[i] < 3.5){
        df2$Number[i] = 3
        }
        else {
        df2$Number[i] = 4
        }
}
}

I invoke the function as:

source("df2type.txt")
type(df2)

Could you please tell me why the function is not working?

Thank you so much!

share|improve this question
    
There are several problems with your code that suggest you may be very new to R. It should be beneficial to start with an introduction to the language such as cran.r-project.org/doc/manuals/R-intro.html –  Seth Oct 4 '12 at 22:59

2 Answers 2

up vote 2 down vote accepted

genotype changes the copy of AllSamples that exists inside the function. When this function ends, that internal copy is destroyed (along with your changes to it); the original version of it (in your global workspace, most likely) is unchanged. If you make your function return AllSamples and then overwrite the original with the return value, that would work.

genotype <- function (AllSamples){
    for(i in 1:length(AllSamples$Mean.Regression)){
        ...
    }
    AllSamples
}

Then it would be called like

AllSamples <- genotype(AllSamples)

A more idiomatic approach would be to not change the data.frame in genotype, but to just create the new column (as a vector), return that, and assign that to the column of AllSamples.

genotype <- function (AllSamples){
    CopyNumber <- rep(0, length(AllSamples$Mean.Regression))
    for(i in seq_along(AllSamples$Mean.Regression)){
        if(AllSamples$Mean.Regression[i] < .5) {
            CopyNumber[i] <- 0
        } else if(AllSamples$Mean.Regression[i] > .5 & AllSamples$Mean.Regression[i] < 1.5) {
            CopyNumber[i] <- 1
        } else if(AllSamples$Mean.Regression[i] > 1.5 & AllSamples$Mean.Regression[i] < 2.5) {
            CopyNumber[i] <- 2
        } else if(AllSamples$Mean.Regression[i] > 2.5 & AllSamples$Mean.Regression[i] < 3.5) {
            CopyNumber[i] <- 3
        } else {
            CopyNumber[i] <- 4
        }
    }
    CopyNumber
}   

which would be called as

AllSamples$CopyNumber <- genotype(AllSamples)

The real, real way to do this is to use vectorized functions rather than explicit loops.

genotype <- function(AllSamples) {
    cut(AllSamples$Mean.Regression,
        breaks = c(-Inf, 0.5, 1.5, 2.5, 3.5, Inf),
        labels = FALSE) - 1
}

which you call as

AllSamples$CopyNumber <- genotype(AllSamples)
share|improve this answer
    
Hi Brian, Thank you so much. I will now try it. Sorry changed the code above again to make it simpler. However I get the point. Thanks a ton! –  user1079898 Oct 5 '12 at 18:28
    
Hi Brian, It works perfectly. Thanks. I am now going to try to do it via vectorized function like you suggested. I have a couple of questions and they may sound very basic but just to clear up my doubts: 1. Vectorized functions are functions like which() or cut() that work on whole vectors..right? 2. Seems like the cut() only works with one vector AllSamples$Mean.Regression. How is the resulting vector getting populated? Cheers! –  user1079898 Oct 5 '12 at 18:48
    
Ok I think I see how its populated. The cut function creates a virtual vector somewhere in memory according to and corresponding to each element of AllSamples$Mean.Regression. That vector is then returned by the function and gets assigned to the dataframe. Am i correct? –  user1079898 Oct 5 '12 at 19:08
    
@user1079898 That is correct. cut returns a vector which genotype subtracts 1 from and then itself returns. "Anonymous" is a more technical term than "virtual," though. –  Brian Diggs Oct 5 '12 at 19:21
    
Thanks a bunch Brian! I really appreciate it! –  user1079898 Oct 6 '12 at 17:02
df$Number <- findInterval( df$Mean, c( seq(0.5, 3.5, by=1) , Inf) )

There was an edge case where df$Mean = 3.5 that was not covered by your definition. My method gives it a 4.

The findInterval function is really doing something very similar to the cut function, except it returns a numeric value rather that a factor. It sets up a bunch of intervals and tells you which interval each item would fall into.

share|improve this answer
    
Sorry I didn't get back to you yesterday, but I wanted to respond to you when I understood whats going on with the findInterval function so I don't sound stupid. Thank you so much for answering my question yesterday. Eventhough I still don't understand how the findInterval function works I took a more traditional approach to help me solve this particular problem. However I have run into another issue when running the function as described above. Thanks a bunch! –  user1079898 Oct 5 '12 at 18:04

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