I would like to be able to write a function that runs regressions in a `data.table`

by groups and then nicely organizes the results. Here is a sample of what I would like to do:

```
require(data.table)
dtb = data.table(y=1:10, x=10:1, z=sample(1:10), weights=1:10, thedate=1:2)
models = c("y ~ x", "y ~ z")
res = lapply(models, function(f) {dtb[,as.list(coef(lm(f, weights=weights, data=.SD))),by=thedate]})
#do more stuff with res
```

I would like to wrap all this into a function since the `#doe more stuff`

might be long. The issue I face is how to pass the various names of things to `data.table`

? For example, how do I pass the column name `weights`

? how do I pass `thedate`

? I envision a prototype that looks like this:

```
myfun = function(dtb, models, weights, dates)
```

Let me be clear: passing the formulas to my function is NOT the problem. If the `weights`

I wanted to use and the column name describing the date, `thedate`

were known then my function could simply look like this:

```
myfun = function(dtb, models) {
res = lapply(models, function(f) {dtb[,as.list(coef(lm(f, weights=weights, data=.SD))),by=thedate]})
#do more stuff with res
}
```

However the column names corresponding to `thedate`

and to the `weights`

are unknown in advance. I would like to pass them to my function as so:

```
#this will not work
myfun = function(dtb, models, w, d) {
res = lapply(models, function(f) {dtb[,as.list(coef(lm(f, weights=w, data=.SD))),by=d]})
#do more stuff with res
}
```

Thanks