I have the following data.frame `d`

from an experiment:

```
- Variable y (response, continuous)
- Factor f (500 levels)
- Time t (posixct)
```

In the last 8 years, y was measured roughly once a month (exact date in t) for each level of f. Sometimes there are 2 measures per month, sometimes a couple of month passed without any measures.

Sorry for not providing example data, but making up unregular time series goes beyond my R knowledge. ;)

I'd like to do the following with this data:

- make a regression using the
`loess()`

function`(y ~ t)`

, for each level of`f`

- make a prediction of
`y`

for the first day of each month and each level of`f`

The first point I think I solved by using Hadleys answer to this question:

```
models <- dlply(d, "f", function(df) loess(y ~ as.numeric(t), data = df))
```

So, now I have a `models`

(class `list`

), with a model for each level of `f`

.
I also created times for which I'd like to predict `y`

for each level of `f`

like this:

```
dates <- seq(min(t),max(t),"months")
```

But now I'm stuck on how to make predictions for each model. Something like this should work (pseudocode):

```
for each f in models
p.f <- predict(models(f),dates)
p.f.complete <- r.bind(p.f.comlete,p.f)
next f
```

As a result, I'd like to have this data.frame:

- y.predicted
- f
- t.predicted (= dates)

Any help would be greatly appreciated.