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I have a data set that is something like the following, but with many more columns and rows:

a<-c("Fred","John","Mindy","Mike","Sally","Fred","Alex","Sam")
b<-c("M","M","F","M","F","M","M","F")
c<-c(40,35,25,50,25,40,35,40)
d<-c(9,7,8,10,10,9,5,8)
df<-data.frame(a,b,c,d)
colnames(df)<-c("Name", "Gender", "Age", "Score")

I need to create a function that will let me sum the scores for selected subsets of the data. However, the subsets selected may have different numbers of variables each time. One subset could be Name=="Fred" and another could be Gender == "M" & Age == 40. In my actual data set, there could be up to 20 columns used in a selected subset, so I need to make this as general as possible.

I tried using a sapply command that included eval(parse(text=...), but it takes a long time with only a sample of 20,000 or so records. I'm sure there's a much faster way, and I'd appreciate any help in finding it.

Thanks in advance!

Sparky

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I guess it will depend on what you find to be a flexible representation of a filter, e.g. list(Gender = "M", Age = 40)? –  flodel Oct 8 '13 at 0:13

2 Answers 2

There are several ways to represent these two variables. One way is as two distinct objects, another is as two elements in a list.

However, using a named list might be the easiest:

# df is a function for the F distribution.  Avoid using "df" as a variable name
DF <- df

example1 <- list(Name = c("Fred"))  # c() not needed, used for emphasis
example2 <- list(Gender = c("M"), Age=c(40, 50))

## notice that the key portion is `DF[[nm]] %in% ll[[nm]]`

subByNmList <- function(ll, DF, colsToSum=c("Score")) {
    ret <- vector("list", length(ll))
    names(ret) <- names(ll)
    for (nm in names(ll))
        ret[[nm]] <- colSums(DF[DF[[nm]] %in% ll[[nm]] , colsToSum, drop=FALSE])

    # optional
    if (length(ret) == 1)
        return(unlist(ret, use.names=FALSE))

    return(ret)
   }

subByNmList(example1, DF)
subByNmList(example2, DF)
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lapply( subset( df, Gender == "M" & Age == 40, select=Score), sum)
#$Score
#[1] 18

I could have writtne just :

sum( subset( df, Gender == "M" & Age == 40, select=Score) )

But that would not generalize very well.

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