# Simplify the code by using one of R's apply functions

I cannot find a satisfying tutorial that would explain me how to use all the possibilities of apply functions. I'm still a newbie but this could often come in handy and significantly simplify my code. So here's my example... I've got a data frame which looks like this:

``````> head(p01)
time key dwell
1   8.13   z  0.00
3   8.13   x  1.25
5   9.38   l  0.87
7  10.25   x  0.15
9  10.40   l  1.13
11 11.53   x  0.45
``````

get it into R:

``````p01 <- structure(list(time = c(8.13, 8.13, 9.38, 10.25, 10.4, 11.53),
key = c("z", "x", "l", "x", "l", "x"), dwell = c(0, 1.25,
0.869, 0.15, 1.13, 0.45)), .Names = c("time", "key", "dwell"), row.names = c(1L, 3L, 5L, 7L, 9L, 11L), class = "data.frame")
``````

Now I want to count the occurences of each letter in `p01\$key` and print them in `p01\$occurences`, so that the result would look like this:

``````    time key dwell occurences
1   8.13   z  0.00          1
3   8.13   x  1.25          3
5   9.38   l  0.87          2
7  10.25   x  0.15          3
9  10.40   l  1.13          2
11 11.53   x  0.45          3
``````

The way I do it now is:

``````p01[p01\$key == "l", "occurences"] <- table(p01\$key)["l"]
p01[p01\$key == "x", "occurences"] <- table(p01\$key)["x"]
p01[p01\$key == "z", "occurences"] <- table(p01\$key)["z"]
``````

...which of course is not the best solution. Especially since the real data contains more possibilities in `p01\$key` (one of 16 different letters).

On top of that I want to calculate total `dwell` for each letter, so what I'm doing now is:

``````p01[p01\$key == "l", "total_dwell"] <- tapply(p01\$dwell, p01\$key, sum)["l"]
p01[p01\$key == "x", "total_dwell"] <- tapply(p01\$dwell, p01\$key, sum)["x"]
p01[p01\$key == "z", "total_dwell"] <- tapply(p01\$dwell, p01\$key, sum)["z"]
``````

in order to get:

``````    time key dwell total_dwell
1   8.13   z  0.00        0.00
3   8.13   x  1.25        1.85
5   9.38   l  0.87        2.00
7  10.25   x  0.15        1.85
9  10.40   l  1.13        2.00
11 11.53   x  0.45        1.85
``````

I've been googling and going through couple of books for the last 6 hours. Will really appreciate an elegant solution and/or a link to some comprehansive tutorial. My solution is obviously working, but it's not the first time I have to go around the problem like this and my script files are starting to look ridiculous!

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I"m sure someone will write you up an answer for this, but this is a fairly comprehensive treatment for this type of task. The only omission would be the data.table package, probably. –  joran Apr 22 '13 at 14:58
My attempt at describing how to convert loops to functions in general: github.com/hadley/devtools/wiki/Functionals –  hadley Apr 23 '13 at 12:05

I'd use `plyr`:

``````res = ddply(p01, .(key), transform,
occurrences = length(key),
total_dwell = sum(dwell))
res
time key dwell occurrences total_dwell
1  9.38   l 0.869           2       1.999
2 10.40   l 1.130           2       1.999
3  8.13   x 1.250           3       1.850
4 10.25   x 0.150           3       1.850
5 11.53   x 0.450           3       1.850
6  8.13   z 0.000           1       0.000
``````

Do note that after this, the table is alphabetically sorted on `key`. You could use `order` to resort for `time`:

``````res[order(res\$time),]
time key dwell occurrences total_dwell
3  8.13   x 1.250           3       1.850
6  8.13   z 0.000           1       0.000
1  9.38   l 0.869           2       1.999
4 10.25   x 0.150           3       1.850
2 10.40   l 1.130           2       1.999
5 11.53   x 0.450           3       1.850
``````
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+1 I really like these one-liners in plyr and friends. I am still learning to use these over base R. –  Simon O'Hanlon Apr 22 '13 at 15:01
Sooo fast! you beat me! +1 ;) –  Jilber Apr 22 '13 at 15:02
Plyr is really nice yes, but a bit slow if the data becomes big. When this is the case, `data.table` is the answer... –  Paul Hiemstra Apr 22 '13 at 15:03
...and just add `total_dwell = sum(dwell)` to include that column as well. –  joran Apr 22 '13 at 15:07
Added the column, thanks @joran. –  Paul Hiemstra Apr 22 '13 at 15:10

If your dataset is huge, try data.table.

``````library(data.table)
DT <- data.table(p01)
DT[,occurences:=.N,by=key]
DT[,total_dwell:=sum(dwell),by=key]

time key dwell occurences total_dwell
1:  8.13   z 0.000          1       0.000
2:  8.13   x 1.250          3       1.850
3:  9.38   l 0.869          2       1.999
4: 10.25   x 0.150          3       1.850
5: 10.40   l 1.130          2       1.999
6: 11.53   x 0.450          3       1.850
``````

The two lines of assigning by reference can be combined as follows:

``````DT[, `:=`(occurences = .N, total_dwell = sum(dwell)), by=key]
``````
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Of course you could also use `data.table` for small datasets :). But the `plyr` syntax looks easier to learn to me (note I heavily use `plyr` and no `data.table` just yet). –  Paul Hiemstra Apr 22 '13 at 15:05
Actually, when you get used to it, data.table syntax is easier for this kind of operation. –  Roland Apr 22 '13 at 15:06
What is easier to read is also a matter of taste probably, but `data.table` looks like an awesome package. –  Paul Hiemstra Apr 22 '13 at 15:07
+1 I like this approach too –  Simon O'Hanlon Apr 22 '13 at 15:08
you can do both at the same time, using quoted `:=` (can't figure out how to type that in comment-space), and you should use `.N` instead of `length(time)` –  eddi Apr 22 '13 at 15:20

I don't think you want to use `apply` here. How about `table` to get the frequencies then use `match` to assign the frequencies to your table:

``````freq <- as.data.frame( table(p01\$key) )
# Var1 Freq
#1    l    2
#2    x    3
#3    z    1

p01\$occurences <- freq[ match(p01\$key , freq[,1] ) , 2 ]
p01
#   time key dwell occurences
#1   8.13   z 0.000          1
#3   8.13   x 1.250          3
#5   9.38   l 0.869          2
#7  10.25   x 0.150          3
#9  10.40   l 1.130          2
#11 11.53   x 0.450          3
``````

As far as I can tell, the only advantage of this method over `plyr` solution is that the original ordering of your dataframe is retained. I do not know if you can specify this in the `ddply` function however (probably you can!).

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+1 The order is fixed quite easily by sorting after the analysis. –  Paul Hiemstra Apr 22 '13 at 15:05
(+1) @PaulHiemstra, I think what Simon was telling is that you can't get an "unsorted" solution from plyr. But you can have both from this one. –  Arun Apr 22 '13 at 15:35

You can naturally solve this problem with tapply. Note that these makes a new object p01.summary, rather than adding to your object, p01. Another line of code could fix that

``````p01.summary = with(p01, cbind(occurences=table(key),total.dwell=tapply(dwell,key,sum)))
``````

or

``````p01.summary = with(p01, do.call(rbind,tapply(dwell,key,function(KEY){
data.frame(occurence=length(KEY),total.dwell= sum(KEY))
}) ))
``````
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