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I am working on dataframe transformations and was working Arun and Ricardo on a previous post

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Arun, suggested a brilliant solution ( matrix multiplication ) to achieve what i was trying to do.

That solution worked for a small data set like what i mentioned in the example, now i am running the same solution on a data frame which has the following sizes:

Total rows: 143345
Total Persons: 98461
Total Items :  30

Now, when i run the following command

 A <- acast(Person~Item+BorS,data=df,fun.aggregate=length,drop=FALSE)

I get this error..

Error: segfault from C stack overflow

Is this because, i dont have enough processing/memory power. My machine has 4 GB RAM, 2.8 GHz i7 processor ( Macbook) ? How do we handle these type of cases ?

share|improve this question
How many levels does BorS have (is it just B or S ?) –  mnel Mar 15 '13 at 2:17
Have you tried it using sparse matrices (Matrix package)? –  ndoogan Mar 15 '13 at 2:38
yes only two levels B and S. No I have not tried the sparse matrices, i will read about it now. –  user2171177 Mar 15 '13 at 3:18
Report the segfault to the package author(s). It is probably related to this known issue github.com/hadley/reshape/issues/31 –  mnel Mar 15 '13 at 3:34

1 Answer 1

A data.table solution. This works by aggregating first, then creating the new data.table and filling in by reference


# some sample data
DT <- data.table(Person = sample(98461, 144000, replace = TRUE), item = sample(c(letters,LETTERS[1:4]), 144000, replace = TRUE), BorS = sample(c('B','S'), 144000, replace = TRUE))
# aggregate to get the number of rows in each subgroup by list item and BorS 
# the `length` of each subgroup
DTl <- DT[,.N , by = list(Person, item, BorS)]
# the columns you want to create
newn <- sort(DT[, do.call(paste0,do.call(expand.grid,list(unique(item),unique(BorS) )))])
# create a column which has this id combination in DTl
DTl[, comnb := paste0(item, BorS)]
# set the key so we can join / subset easily
setkey(DTl, comnb)
# create a data.table that has 1 row for each person, and has  columns for all the combinations
# of item and BorS
DTb <- DTl[, list(Person)][, c(newn) := 0L]
# set the key so we can join / subset easily
setkey(DTb, Person)
# this bit could be far quicker, but I think
# would require a feature request to data.table
for(nn in newn){
  # for each of the cominations extract which persons have
  # this combination >0
  pp <- DTl[list(nn), list(Person,N)]
  # for the people who have N > 0
  # assign the correct numbers in the correct column in DTb
  DTb[list(pp[['Person']]), c(nn) := pp[['N']]]

To complete you initital problem, you can extract the appropriate columns from DTb as a matrix

A <- DTb[,-1,with = FALSE]

results <- crossprod(A)
share|improve this answer
can you please explain your solution starting with the second line? –  user2171177 Mar 15 '13 at 3:27
@user2171177 -- I hope that makes a bit more sense. –  mnel Mar 15 '13 at 3:32
sorry for my ignorance... –  user2171177 Mar 15 '13 at 3:53
@user2171177 -- No need to apologise. The answer is far better with the explanation there –  mnel Mar 15 '13 at 3:54
what is .N in DTl <- DT[,.N , by = list(Person, item, BorS)] ? Is it the number of occurrences ? –  user2171177 Mar 15 '13 at 4:04

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