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I want to be able to run tests on my data by all possible combinations of categorical variables, including the possibility of subsetting by just one and not the others. As an example, take the following data:

dbh <- runif(100,5,40)
err <- runif(100,0,4)
height <- dbh^.8 + err
elevation <- factor(rep(c("L","M","H"),100)[1:100], levels=c("L","M","H",NA))
aspect <- factor(rep(c("E","W"),50), levels=c("E","W",NA))
dat <- data.frame(dbh, height, aspect, elevation)

To get the mean dbh for all combinations of aspect and elevation I tried

result <- ddply( dat, c("elevation","aspect"), summarise, mean(dbh))

However, this only takes the mean of the following subsets:

  elevation aspect      ..1
1         L      E 26.07509
2         L      W 23.78510
3         M      E 26.72313
4         M      W 20.88566
5         H      E 19.63125
6         H      W 18.60170

And I would like it to take the mean of the following:

factors <- data.frame(elevation = rep(c("H","M","L",NA),3),
   aspect = c(rep("E",4),rep("W",4), rep(NA,4)))

   elevation aspect
1       H     E
2       M     E
3       L     E
4    <NA>     E
5       H     W
6       M     W
7       L     W
8    <NA>     W
9       H  <NA>
10      M  <NA>
11      L  <NA>
12   <NA>  <NA>

Can ddply be coerced to return this result?

share|improve this question
I'm not sure how to do that and get the same result. The NA are supposed to signify the absence of a subsetting factor, not the addition of another. –  6pool May 29 '13 at 19:34
Your use of NA is what's confusing people, I think, since you seem to be using it to represent subgroup totals rather than missing values. –  joran May 29 '13 at 20:05

1 Answer 1

up vote 2 down vote accepted

Since those are overlapping categories, I don't think you can use any single split-apply-combine strategy to get that result. So just get the results separately and rbind them (or rather rbind.fill them, to compensate for different columns):

rbind.fill(ddply( dat, c("elevation","aspect"), summarise, mean(dbh)),
           ddply( dat, "elevation", summarise, mean(dbh)),
           ddply( dat, "aspect", summarise, mean(dbh)),
           data.frame('..1' = mean(dat$dbh)))
share|improve this answer
Thanks, that works! –  6pool May 29 '13 at 20:06
however, if I have many categorical variables the code gets very long and repetitive. Is there a simpler way to accomplish this without ddply? –  6pool May 29 '13 at 20:22
you should probably ask that as a separate question (or edit OP) - I can't think of a way off the top of my head, but somebody else might (and they are probably not very likely to see your comments here); also please take @joran's comment into account - your question phrasing is very confusing –  eddi May 29 '13 at 20:30

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