I have a data.table of frequently collected data:

```
set.seed(1)
t1 <- seq(from=as.POSIXct('2014-1-1'), to=as.POSIXct('2014-6-1'), by='day')
T1 <- data.table(time1=t1, group=rep(c('A', 'B'), length(t1)/2), value1=rnorm(length(t1)))
```

and a data.table of infrequently collected data:

```
t2 <- seq(from=as.POSIXct('2014-1-1'), to=as.POSIXct('2014-6-1'), by='week')
T2 <- data.table(time2=t2, group=rep(c('A', 'B'), length(t2)/2), value2='ArbitraryText')
```

For each row of `T2`

I would like to find all of the rows in `T1`

that fall between `T2$t2`

and `T2$t2`

minus 1 week, then take the average value of `T1$V2`

, by `T2$group`

.

So the number of rows in the resulting table would be exactly equal to the number of rows in `T2`

and the "correct" value that should be returned for the second row of `T2`

(the average value of those `T1$value`

that are in `T1$group`

B and fall between Jan 1 and Jan 22) would look like this:

```
t2 group value1 value2
2014-01-22 00:00:00 B 0.1674069 "Arbitrary Text"
```

I imagine the fist step would be setting the keys for each data.table:

```
setkey(T1, group, time1)
setkey(T2, group, time2)
```

I'm unsure of how to proceed. Curiously `T1[T2[time1 %between% c(t2, t2-604800)]]`

yields only results between Jan 1 and Jan 8, despite the default `mult='all'`

.

EDIT: I should point out that each of the intervals (`T2$time2`

minus 3 weeks to `T2$time2`

) overlap each other on purpose. This means that each row of `T1`

"belongs" to more than one desired average because it falls into the interval specified by more than one row of `T2`

.