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I want to sum about 10000 columns like colSparseX on 1500 sparse rows of an dataframe. If I have the input:

(I tried on OriginalDataframe this:

coldatfra <- aggregate(. ~colID,datfra,sum)

and this:

coldatfra <- ddply(datfra, .(colID), numcolwise(sum))

But it doesn't work!)

colID <- c(rep(seq(1:6),2), rep(seq(1:2),3))
colSparse1 <- c(rep(1,5), rep(0,4), rep(1,2), rep(0,5), rep(1,2))
cPlSpars2 <- c(rep(1,3), rep(0,6), rep(1,2), rep(0,5), rep(1,2))
coMSparse3 <- c(rep(1,6), rep(0,3), rep(1,2), rep(0,5), rep(1,2))
colSpArseN <- c(rep(1,2), rep(0,7), rep(1,2), rep(0,5), rep(1,2))

(datfra <- data.frame(colID, colSparse1, cPlSpars2, coMSparse3, colSpArseN))

colID colSparse1 cPlSpars2 coMSparse3 colSpArseN
    1          1         1          1          1
    2          1         1          1          1
    3          1         1          1          0
    4          1         0          1          0
    5          1         0          1          0
    6          0         0          1          0
    1          0         0          0          0
    2          0         0          0          0
    3          0         0          0          0
    4          1         1          1          1
    5          1         1          1          1
    6          0         0          0          0
    1          0         0          0          0
    2          0         0          0          0
    1          0         0          0          0
    2          0         0          0          0
    1          1         1          1          1
    2          1         1          1          1

And want to sum the elements for each ID on all (10000 columns - requires some placeholder for colnames are very variable words) colSparses in order to get this:

colID colSparse1 cPlSpars2 coMSparse3 colSpArseN
    1          2         2          2          2
    2          2         2          2          2
    3          1         1          1          0
    4          2         1          2          1
    5          2         1          2          1
    6          0         0          1          0

Note: str(OriginalDataframe)

'data.frame':   1500 obs. of  10000 variables:
 $ someword                                                : num  0 0 0 0 0 0 0 0 0 0 ...
 $ anotherword                                             : num  0 0 0 0 0 0 0 0 0 0 ...

And on a smaller version (which was terminated) of the OriginalDataframe treated with ddply(datfra, .(colID), numcolwise(sum)) I get:

     colID colSparse1 cPlSpars2 coMSparse3 colSpArseN
1     0019          0         0          0          0
NA    <NA>         NA        NA         NA         NA
NA.1  <NA>         NA        NA         NA         NA
NA.2  <NA>         NA        NA         NA         NA
NA.3  <NA>         NA        NA         NA         NA
share|improve this question
    
I don't get those errors –  rawr Feb 24 at 2:24
    
@rawr Hello, again :) Thank you much! I expanded slightly the example, maybe you get the errors now. However, the problem may be related to ddply (it may not work so efficiently). Is it possible to avoid ddply? –  alex Feb 24 at 2:32
1  
I copied all your code and it runs fine. clear your workspace and run it again. also, plyr is for data frames and data frames are not matrices. there are some packages with methods for working with sparse matrices, Matrix and SparseM I think. I don't use them, so I can't point you to relevant functions, however. –  rawr Feb 24 at 2:42
    
@rawr Thank you very much! I need to operate on dataframes (changed title). But the Idea is good. I will try a workaround on matrices! –  alex Feb 24 at 2:47
3  
ddply is not the solution if you want to work with data.frames efficiently. Look at dplyr or data.table instead. –  mnel Feb 24 at 2:49

1 Answer 1

up vote 2 down vote accepted

Take a look at my answer to this question: Mean per group in a data.frame

Your question is similar. If you change the function being applied from mean to sum, you get what you are looking for.

colstosum <- names(mydt)[2:5]
mydt.sum <- mydt[,lapply(.SD,sum,na.rm=TRUE),by=colID,.SDcols=colstosum]

mydt.sum
   colID colSparse1 cPlSpars2 coMSparse3 colSpArseN
1:     1          2         2          2          2
2:     2          2         2          2          2
3:     3          1         1          1          0
4:     4          2         1          2          1
5:     5          2         1          2          1
6:     6          0         0          1          0

Granted, I can't guarantee the speed or lack thereof of sum on a large data.table. Also, there is a way you should be able to incorporate colSums in the lapply function, but I can't figure out the syntax at the moment.

share|improve this answer
    
Thank you much for your answer. On my system it dosen't works. In an second attempt I also load library(data.table) but nothing changed. For colstosum <- names(mydt[,2:5,with=F]) I get Error in '[.data.frame'(mydt, , 2:5, with = F) : unused argument (with = F) and for the second line I get: Error in '[.data.frame'(mydt, , lapply(.SD, sum, na.rm = TRUE), by = colID, : unused arguments (by = colID, .SDcols = colstosum). –  alex Feb 25 at 8:48
    
Sounds like you didn't convert mydt to a data.table before trying to run data.table commands on it. Do mydt <- data.table(mydt) first. –  fabians Feb 25 at 10:59

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