I have a data frame that looks like this (simplified for exposition):

```
date id value
d1 id1 v1
d2 id1 v2
d1 id2 v3
d2 id2 v4
```

I would like to break this apart by id, run a rolling regression on each id (so for each id there will be N regressions), pick out the rsquared and assemble this back to a dataframe. My method for doing this was:

```
roll_reg <- function(df) {
T <- with(df, min(nlen(xs_ret), nlen(xs_mkt), nlen(smb), nlen(hml), nlen(umd)))
OFFSET <- 3
themodels <- as.list(rep(NA, OFFSET))
#120 days rolling period
if (T>OFFSET) {
#the first OFFSET models are na
for (i in seq(OFFSET+1, T)) {
idx <- seq(i-OFFSET-1,i)
themodels[i] <- list(with(df,
lm(xs_ret[idx]~xs_mkt[idx]+smb[idx]+hml[idx]+umd[idx])))
}
return(themodels)
}
else { return(NA) }
}
models <- dlply(dt_df, "id", roll_reg)
```

Then I was going to reassemble everything using

```
ldply(models, function(x) {summary(x)$r.squared})
```

This does not work since models is a list of lists, and x is a list of models. However, if my `function(x)`

returns a list by `cat`

-ing all the rsquared into a list I get an error because `ldply`

expects `function(x)`

to return an atomic result. Help would be much appreciated.