Here's a solution using `IRanges`

package.

`idx`

assumes your data format is `Time`

, `data`

, `Time`

, `data`

, ... and so on.. So, it creates indices `1,3,5,...ncol(df)-1`

.

`ir1`

is the intervals you would want the mean for. It's width is 400. It goes from 0 to max(Time) for each Time column (here columns 1 and 3).

`ir2`

is the corresponding Time column of interval width = 1.

Then I get the overlaps of `ir1`

with `ir2`

, which basically tells me which intervals from ir2 overlap with ir1 (which we want), from which I calculate the mean and output the `data.frame`

.

```
idx <- seq(1, ncol(df), by=2)
o <- lapply(idx, function(i) {
ir1 <- IRanges(start=seq(0, max(df[[i]]), by=401), width=401)
ir2 <- IRanges(start=df[[i]], width=1)
t <- findOverlaps(ir1, ir2)
d <- data.frame(mean=tapply(df[[i+1]], queryHits(t), mean))
cbind(as.data.frame(ir1), d)
})
> o
# [[1]]
# start end width mean
# 1 0 400 401 0.6750000
# 2 401 801 401 0.8050000
# 3 802 1202 401 0.8750000
# 4 1203 1603 401 0.2285333
# [[2]]
# start end width mean
# 1 0 400 401 0.73508
# 2 401 801 401 0.13408
# 3 802 1202 401 0.26408
# 4 1203 1603 401 1.06408
# 5 1604 2004 401 3.06408
```

For each `Time`

column, you'll get a list with the intervals and mean for that interval.

`dump(head(data, 10), "")`

and paste output here? Is it possible to share a bit of the data? That would help a lot. If there are confidentiality issues, maybe you could multiply the numbers by random values first. – Oscar de León Feb 21 '13 at 3:39