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I love the data.table package in R, and I think it could help me perform sophisticated cross tabulation tasks, but haven't figured out how to use the package to do tasks similar to table.

Here's some replication survey data:

opinion <- c("gov", "market", "gov", "gov")
ID <- c("resp1", "resp2", "resp3", "resp4")
party <- c("GOP", "GOP", "democrat", "GOP")

df <- data.frame(ID, opinion, party)

In tables, counting the number of opinions by party is as simple as table(df$opinion, df$party).

I've managed to do something similar in data.table, but the result is clunky and it adds a separate column.

dt <- data.table(df)
dt[, .N, by="party"]

There's a number of grouping operations in data.table that could be great for fast and sophisticated crosstabs of survey data, but i haven't found any tutorials on how to it. Thanks for any help.

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1 Answer 1

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We can use dcast from data.table (See the Efficient reshaping using data.tables vignette on the project wiki or on the CRAN project page).

dcast(dt, opinion~party, value.var='ID', length)

Benchmarks

If we use a slightly bigger dataset and compare the speed using dcast from reshape2 and data.table

set.seed(24)
df <- data.frame(ID=1:1e6, opinion=sample(letters, 1e6, replace=TRUE),
  party= sample(1:9, 1e6, replace=TRUE))
system.time(dcast(df, opinion ~ party, value.var='ID', length))
#   user  system elapsed 
#  0.278   0.013   0.293 
system.time(dcast(setDT(df), opinion ~ party, value.var='ID', length))
#   user  system elapsed 
# 0.022   0.000   0.023 

system.time(setDT(df)[, .N, by = .(opinion, party)])
#  user  system elapsed 
# 0.018   0.001   0.018 

The third option is slightly better but it is in 'long' format. If the OP wants to have a 'wide' format, the data.table dcast can be used.

NOTE: I am using the the devel version i.e. v1.9.7, but the CRAN should be fast enough.

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  • this works, but it basically nullifies the the data.table package itself. most of the benefits from data.table from from the subsetting and grouping operations, like "by." This essentially treats the dt as a data.frame. Am i missing something, or is the data.table package just not good for survey data?
    – tom
    Commented Oct 4, 2015 at 16:17
  • 6
    @tom No, it is not treating it as data.frame. The dcast is from the data.table package and not from the reshape2 and is optimized for speed.
    – akrun
    Commented Oct 4, 2015 at 16:18
  • @tom Updated with benchmarks.
    – akrun
    Commented Oct 4, 2015 at 16:23
  • @akrun are you using 1.9.7? I'm wondering if you're getting the boost from the solution to FR #1251 (which, if I understand, isn't in current CRAN release, 1.9.6); if so this should be mentioned. I remember dt[,table(x,y)] being competitive with dt[,.N,by=.(x,y)] but that's no longer the case with the update. Commented Oct 7, 2015 at 17:56
  • @MichaelChirico Yes, I am using 1.9.7. But, the CRAN version should stilll be faster than reshape2 dcast.
    – akrun
    Commented Oct 7, 2015 at 18:00

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