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Suppose there is a dataset of different regions, each region a subset of a state, and some outcome variable:

regions <- c("Michigan, Eastern",
    "Michigan, Western",
    "Mississippi, Northern",
    "Mississippi, Southern",
    "Missouri, Eastern",
    "Missouri, Western")

outcome <- rpois(7, 12)
testset <- data.frame(regions,outcome)

                 regions outcome
1     Michigan, Eastern      10
2     Michigan, Western      11
3             Minnesota      17
4 Mississippi, Northern      12
5 Mississippi, Southern      12
6     Missouri, Eastern      17
7     Missouri, Western      13

A useful tool would aggregate each region and add, or take the mean or maximum, etc. of outcome by region and generate a new data frame for state. A sum, for example, would output this:

                state    outcome
1             Michigan       21
3             Minnesota      17
4             Mississippi    24
6             Missouri       30

The aggregate() function won't solve this problem. Is there something else in R that is built for this? It seems like grep could be used to generate the new column "states" as part of an application specific program. Seems like this would already be out there somewhere though.

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There only tool that magically understands the particulars of your specific data is you. Create the additional, more meaningful columns and use aggregate (or something else). –  joran Jul 16 '13 at 21:43

1 Answer 1

up vote 4 down vote accepted

The reason this isn't straight forward is that the structure of your data is not consistent, so you couldn't build a library simply for it.

Your state, region column is basically an index column, and you want to index across part of it. tapply is designed for this, but there's no reason to build in a function to do it automatically for this specific scenario. You could do it without creating the column though


The index column just replaces the , and everything after it, leaving the index column.

PS: you have a slight typo in your example, your data.frame should be

testset <- data.frame(regions,outcome)
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