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I would like to aggregate a data.frame over 3 categories, with one of them varying. Unfortunately this one varying category contains NAs (actually it's the reason why it needs to vary). Thus I created a list of data.frames. Every data.frame within this list contains only complete cases with respect to three variables (with only one of them changing).

Let's reproduce this:

library(plyr)

mydata <- warpbreaks
names(mydata) <- c("someValue","group","size")
mydata$category <- c(1,2,3)
mydata$categoryA <- c("A","A","X","X","Z","Z")
# add some NA
mydata$category[c(8,10,19)] <- NA
mydata$categoryA[c(14,1,20)] <- NA 

# create a list of dfs that contains TRUE FALSE
noNAList <- function(vec){
res <- !is.na(vec)
return(res)
}

testTF <- lapply(mydata[,c("category","categoryA")],noNAList)

# create a list of data.frames
selectDF <- function(TFvec){
res <- mydata[TFvec,]
return(res)
}

# check x and see that it may contain NAs as long
# as it's not in one of the 3 categories I want to aggregate over    
x <-lapply(testTF,selectDF)

## let's ddply get to work
doddply <- function(df){
ddply(df,.(group,size),summarize,sumTest = sum(someValue))
}

y <- lapply(x, doddply);y

y comes very close to what I want to get

$category
group size sumTest
1     A    L     375
2     A    M     198
3     A    H     185
4     B    L     254
5     B    M     259
6     B    H     169

$categoryA
group size sumTest
1     A    L     375
2     A    M     204
3     A    H     200
4     B    L     254
5     B    M     259
6     B    H     169

But I need to implement aggregation over a third varying variable, which is in this case category and categoryA. Just like:

group size category sumTest sumTestTotal      
1      A    H        1      46          221 
2      A    H        2      46          221 
3      A    H        3      93          221 

and so forth. How can I add names(x) to lapply, or do I need a loop or environment here?

EDIT: Note that I want EITHER category OR categoryA added to the mix. In reality I have about 15 mutually exclusive categorical vars.

share|improve this question
    
In some way this a follow-up question to this thread: stackoverflow.com/questions/8897927/… –  Matt Bannert Jan 18 '12 at 16:25
2  
rm(list=ls()) is a pretty devious line to include in code that folks are likely to copy+paste into their session in an attempt to help you. ;) –  joran Jan 18 '12 at 18:16
    
On point joran, I hope it didn't crush this weeks work for you. removed it. –  Matt Bannert Jan 18 '12 at 18:37
1  
Why I NEVER do odd jobs in a working R session! Start a fresh R every time, kids! –  Spacedman Jan 18 '12 at 18:54
    
I caught it in time. I'm laughing, not frowning. –  joran Jan 18 '12 at 18:57

4 Answers 4

up vote 3 down vote accepted

I know the question explicitly requests a ddply()/lapply() solution.

But ... if you are willing to come on over to the dark side, here is a data.table()-based function that should do the trick:

# Convert mydata to a data.table
library(data.table)
dt <- data.table(mydata, key = c("group", "size"))

# Define workhorse function
myfunction <- function(dt, VAR) {
    E <- as.name(substitute(VAR))
    dt[i = !is.na(eval(E)), 
       j = {n <- sum(.SD[,someValue]) 
            .SD[, list(sumTest = sum(someValue),
                       sumTestTotal = n,
                       share = sum(someValue)/n), 
                by = VAR]
           }, 
       by = key(dt)]
}

# Test it out
s1 <- myfunction(dt, "category")
s2 <- myfunction(dt, "categoryA")

ADDED ON EDIT

Here's how you could run this for a vector of different categorical variables:

catVars <- c("category", "categoryA")

ll <- lapply(catVars, 
             FUN = function(X) {
                       do.call(myfunction, list(dt, X))
                   })
names(ll) <- catVars

lapply(ll, head, 3)
# $category
#      group size category sumTest sumTestTotal     share
# [1,]     A    H        2      46          185 0.2486486
# [2,]     A    H        3      93          185 0.5027027
# [3,]     A    H        1      46          185 0.2486486
# 
# $categoryA
#      group size categoryA sumTest sumTestTotal share
# [1,]     A    H         A      79          200 0.395
# [2,]     A    H         X      68          200 0.340
# [3,]     A    H         Z      53          200 0.265
share|improve this answer
    
@ran2 -- If you think this would be better posted as a response to the question you asked earlier, just let me know, and I'll move it there. Cheers. –  Josh O'Brien Jan 18 '12 at 19:30
    
dark side... now we're talkin! –  Matt Bannert Jan 18 '12 at 19:30
    
I'll check it, got an own solution in the making based list2env and eval and post it here if it works. Don't know about your suggestion (yet). At the moment I'd rather delete the first question and go on with this one, because I feel my explanation is better and so is the discussion. Thanks for the offer though, i will get back to you :) –  Matt Bannert Jan 18 '12 at 19:33
    
impressive. But how to let it work through a category variables. Do not want to call 15 of them manually... –  Matt Bannert Jan 18 '12 at 19:38
    
me neither. +1 for this anyway and you are likely to get the acc, too – if mine aint better with respect to running it over a vector of categorical vars :) –  Matt Bannert Jan 18 '12 at 19:42

I think you might be making this really hard on yourself, if I understand your question correctly.

If you want to aggregate the data.frame 'myData' by three (or four) variables, you would simply do this:

aggregate(someValue ~ group + size + category + categoryA, sum, data=mydata)

   group size category categoryA someValue
1      A    L        1         A        51
2      B    L        1         A        19
3      A    M        1         A        17
4      B    M        1         A        63

aggregate will automatically remove rows that include NA in any of the categories. If someValue is sometimes NA, then you can add the parameter na.rm=T.

I also noted that you put a lot of unnecessary code into functions. For example:

# create a list of data.frames
selectDF <- function(TFvec){
    res <- mydata[TFvec,]
    return(res)
}

Can be written like:

selectDF <- function(TFvec) mydata[TFvec,] 

Also, using lapply to create a list of two data frames without the NA is overkill. Try this code:

x = list(mydata[!is.na(mydata$category),],mydata[!is.na(mydata$categoryA),])
share|improve this answer
    
+1 for helping out with selectDF, did not think of that. Still, you miss something here: I have 2 fixed categorical variables and one varying variables. Your code takes care of 3 when 3 are available and of 4 when 4 are available. In the real dataset I have about 15 categorical variables in addition to the fixed ones. And I need an extra aggregation for every one of them. Edited the question to make this clear. –  Matt Bannert Jan 18 '12 at 18:32

Finally, I found a solution that might not be as slick as Josh' but it works without no dark forces (data.table). You may laugh – here's my reproducible example using the same sample data as in the question.

qual <- c("category","categoryA")

# get T / F vectors
noNAList <- function(vec){
res <- !is.na(vec)
return(res)
}

selectDF <- function(TFvec) mydata[TFvec,]

NAcheck <- lapply(mydata[,qual],noNAList)

# create a list of data.frames
listOfDf <- lapply(NAcheck,selectDF)

workhorse <- function(charVec,listOfDf){
dfs <- list2env(listOfDf)
# create expression list
exlist <- list()
for(i in 1:length(qual)){
exlist[[qual[i]]] <- parse(text=paste("ddply(",qual[i],
                                  ",.(group,size,",qual[i],"),summarize,sumTest =    sum(someValue))",
                                  sep=""))
}

res <- lapply(exlist,eval,envir=dfs)
return(res)

}
share|improve this answer

Is this more like what you mean? I find your example extremely difficult to understand. In the below code, the method can take any column, and then aggregate by it. It can return multiple aggregation functions of someValue. I then find all the column names you would like to aggregate by, and then apply the function to that vector.

# Build a method to aggregate by column.
agg.by.col = function (column) {
    by.list=list(mydata$group,mydata$size,mydata[,column])
    names(by.list) = c('group','size',column)
    aggregate(mydata$someValue, by=by.list, function(x) c(sum=sum(x),mean=mean(x)))
}

# Find all the column names you want to aggregate by
cols = names(mydata)[!(names(mydata) %in% c('someValue','group','size'))]

# Apply the method to each column name.
lapply (cols, agg.by.col)
share|improve this answer
    
thanks for taking the time. If my example is not good, maybe Josh' example helps. Running his code does exactly what I want. It perfectly solves the question. –  Matt Bannert Jan 18 '12 at 20:50

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