Here's one way:

```
## reproducible code for example
dat <- read.table(foo <- textConnection("f x
A 1.1
A 2.2
A 3.3
B 3.5
B 3.7
B 3.9
B 4.1
B 4.5
A 5.1
A 5.2
C 5.4
C 5.5
C 6.1
B 6.2
B 6.3
"), header = TRUE)
close(foo)
```

We use `rle()`

to compute the run lengths of `f`

and the create a new factor `fac`

that indexes the changes, for want of a better word, in `f`

. We then aggregate on `f`

and `fac`

:

```
lens <- with(dat, rle(as.character(f)))
dat$fac <- with(lens, factor(rep(seq_along(lengths), times = lengths)))
aggregate(x ~ f + fac, data = dat, FUN = mean)
```

Giving:

```
> aggregate(x ~ f + fac, data = dat, FUN = mean)
f fac x
1 A 1 2.200000
2 B 2 3.940000
3 A 3 5.150000
4 C 4 5.666667
5 B 5 6.250000
```

We can easily drop the second column `fac`

in the result if that is undesirable:

```
> aggregate(x ~ f + fac, data = dat, FUN = mean)[,-2]
f x
1 A 2.200000
2 B 3.940000
3 A 5.150000
4 C 5.666667
5 B 6.250000
```