# Breaking the tapply junkie habit

I've learned R by toying, and I'm starting to think that I'm abusing the tapply function. Are there better ways to do some of the following actions? Granted, they work, but as they get more complex I wonder if I'm losing out on better options. I'm looking for some criticism, here:

``````tapply(var1, list(fac1, fac2), mean, na.rm=T)

tapply(var1, fac1, sum, na.rm=T) / tapply(var2, fac1, sum, na.rm=T)

cumsum(tapply(var1, fac1, sum, na.rm=T)) / sum(var1)
``````

Update: Here's some example data...

``````     var1    var2 fac1           fac2
1      NA  275.54   10      (266,326]
2      NA  565.89   10      (552,818]
3      NA  815.41    6      (552,818]
4      NA  281.77    6      (266,326]
5      NA  640.24   NA      (552,818]
6      NA   78.42   NA     [78.4,266]
7      NA 1027.06   NA (818,1.55e+03]
8      NA  355.20   NA      (326,552]
9      NA  464.52   NA      (326,552]
10     NA 1397.11   10 (818,1.55e+03]
11     NA  229.82   NA     [78.4,266]
12     NA  542.77   NA      (326,552]
13     NA  829.32   NA (818,1.55e+03]
14     NA  284.78   NA      (266,326]
15     NA  194.97   10     [78.4,266]
16     NA  672.55    8      (552,818]
17     NA  348.01   10      (326,552]
18     NA 1550.79    9 (818,1.55e+03]
19 101.98  101.98    4     [78.4,266]
20     NA  292.80    6      (266,326]
``````

Update data dump:

structure(list(var1 = c(NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, 101.98, NA), var2 = c(275.54, 565.89, 815.41, 281.77, 640.24, 78.42, 1027.06, 355.2, 464.52, 1397.11, 229.82, 542.77, 829.32, 284.78, 194.97, 672.55, 348.01, 1550.79, 101.98, 292.8), fac1 = c(10L, 10L, 6L, 6L, NA, NA, NA, NA, NA, 10L, NA, NA, NA, NA, 10L, 8L, 10L, 9L, 4L, 6L), fac2 = structure(c(2L, 4L, 4L, 2L, 4L, 1L, 5L, 3L, 3L, 5L, 1L, 3L, 5L, 2L, 1L, 4L, 3L, 5L, 1L, 2L), .Label = c("[78.4,266]", "(266,326]", "(326,552]", "(552,818]", "(818,1.55e+03]"), class = "factor")), .Names = c("var1", "var2", "fac1", "fac2"), row.names = c(NA, -20L), class = "data.frame")

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Just as a comment: while these are clear examples, it would be easier to help if you provided sample data for var1, fac1, etc. –  Shane Sep 16 '09 at 17:36
Good point. Data sample added. –  Totovader Sep 16 '09 at 18:15
Suggestion: could you use the dput() function to extract the structure of that sample data, and then paste the results here? Makes it a breeze to import. –  Matt Parker Sep 16 '09 at 18:32
An other idea is to use something from the "datasets" package which comes with R: ?datasets. Then no extra work is required for replication. –  Shane Sep 16 '09 at 18:40
I know I'm already in trouble if I can't even get the example right... added a dput of the example df. Keep in mind I'm unabashedly using attach() to get to the data in this scenario. –  Totovader Sep 16 '09 at 19:50

Perhaps the plyr package might be of interest to you?

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Brilliant. It's like ETL for data analysis itself. This also goes a long way to defeating the pivot table data dredging my colleagues are so fond of. Thanks for the suggestion. I'm already rewriting code. –  Totovader Sep 16 '09 at 20:12
Although plyr provides a useful set of tools, it's important to realize that it is often slower than traditional calls to base functions. –  Brandon Bertelsen May 22 '11 at 20:32
For part 1 I prefer `aggregate` because it keeps the data in a more R-like one observation per row format.
`aggregate(var1, list(fac1, fac2), mean, na.rm=T)`