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I have a large file with the following format which I read as x


It gives the product a given user bought and its frequency. I'm trying to make it into a matrix which gives all the productid's as columns and userids as rows with the frequency value as the entry. So the expected output is

       1 2 3 4 5 8
293994 0 0 0 0 3 3
949859 1 1 0 0 0 0
123234 1 0 1 1 0 0

It is a sparse matrix. I tried doing table(x[[1]],x[[2]]) which works for small files, but beyond a point table gives an error

Error in table(x[[1]], x[[2]]) : 
 attempt to make a table with >= 2^31 elements
Execution halted

Is there a way to get this to work? I'm on R-3.1.0 and its supposed to support 2^51 sized vectors, so confused why it can't handle the file size. I've 40MM lines with total file size of 741M. Thanks in advance

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If you want real sparse matrices then look in the "Matrix" package. –  BondedDust Jun 24 at 22:48
Did you try aggregate(freq ~ userid + productid,data = df,sum)? –  Andy Clifton Jun 24 at 22:50
or perhaps library(tidyr); spread(x,productid,freq,fill = 0) –  AndrewMacDonald Jun 24 at 22:53
Been trying aggregate but its very slow. –  broccoli Jun 24 at 23:26
Aggregate does not give the desired result. –  broccoli Jun 25 at 20:07

1 Answer 1

One data.table way of doing it is:


# adjust fun.aggregate as necessary - not very clear what you want from OP
dcast.data.table(your_data_table, userid ~ productid, fill = 0L)

You can check if that works for your data.

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I get the following error Error in dcast.data.table(x, deviceid ~ cxbrandid, fun = sum, fill = 0L) : long vectors not supported yet: ../../src/include/Rinlinedfuns.h:137 In addition: Warning message: In setattr(l, "row.names", .set_row_names(length(l[[1L]]))) : NAs introduced by coercion –  broccoli Jun 24 at 23:24
This method does not work. –  broccoli Jun 25 at 14:56
@broccoli perhaps you can a dput sample of your data - it works for the data in OP –  eddi Jun 25 at 16:10
The method works for small data sets, but at scales I mention in the question it gives the error message I have shown above. –  broccoli Jun 25 at 17:16
@broccoli perhaps aggregating before you dcast would help? i.e. do dcast.data.table(dt[, sum(freq), by = list(userid, productid)], userid ~ productid, fill = 0L) –  eddi Jun 25 at 17:55

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