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In R, it's always the small things that confound me.

Say I have a data frame like this:

  location   species
1  seattle   A
2  buffalo   C
3  seattle   D
4  newark    J
5  boston    Q

I would like to append a column to this frame that shows the number of times a location appears in the data set, with a result like this:

  location   species    freq-loc
1  seattle   A          2           #there are 2 entries with location=seattle
2  buffalo   C          1           #there is 1 entry with location=buffalo
3  seattle   D          2
4  newark    J          1
5  boston    Q          1

I know using table(data$location) can give me a contingency table. But I don't know how to map each value in the table to a corresponding entry in the dataframe. Can somebody help?


Thank you so much for all the help! Just for interest, I ran a benchmark test to see how the merge, plyr and ave solutions ran compared to each other. The testing set is a 10,000 rows subset of my original 10 by ~7mil data set.:

Unit: milliseconds
expr        min         lq     median        uq       max neval
MERGE 110.877337 111.989406 112.585420 113.51679 120.23588   100
PLYR  26.305645  27.080403  27.576580  27.87157  68.40763   100
AVE   2.994528   3.117255   3.179898   3.35834  10.02955   100
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4 Answers 4

I'm sure someone will post an (ugly;)) ave or plyr solution shortly, but here's the data.table one:

dt = data.table(your_df)

dt[, `freq-loc` := .N, by = location]
# note: using `-quotes around your var name, because of the "-" in the name
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merge(data, data.frame(table(location = data$location)), by = c("location"))
# location species Freq
# 1   boston       Q    1
# 2  buffalo       C    1
# 3   newark       J    1
# 4  seattle       A    2
# 5  seattle       D    2

Also, I heard a request for plyr:

join(data, data.frame(table(location = data$location)))
# Joining by: location
# location species Freq
# 1  seattle       A    2
# 2  buffalo       C    1
# 3  seattle       D    2
# 4   newark       J    1
# 5   boston       Q    1
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nah, the "right" plyr solution I think is: ddply(df, .(location), mutate, freq.loc = length(location)) – eddi Jun 10 '13 at 18:42
By "right" I meant "conceptually correct", at least as far as the plyr framework goes, and not faster. I can't say I care about the speed of either since I'm firmly in the "data.table does this way better" camp, but if that's of interest to you, then you should do it and post the results. Using a benchmarking package like microbenchmark would probably be best if you do it. – eddi Jun 10 '13 at 18:49

Here's a base R way with ave.

transform(d, freq.loc = ave(seq(nrow(d)), location, FUN=length))
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Trying to work with dashes in column names will be very painful. Better to use underscores or "dots".

dfrm$freq_loc <- ave( as.numeric(dat[[1]]), dat[["location"]] ,

I trying using ave without the as.numeric on the first column, but to my surprise got cryptic error messages related to factor levels.

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