I have weekly observations of revenues from the sale of different products, separately for different countries, like so:

```
df <- data.frame(year=rep(c(2002,2003), each=16),
week=rep(1:4,4),
product=rep(c('A','B'), each=8, times=2),
country=rep(c('usa','germany'), each=4, times=4),
revenue=abs(rnorm(32)))
```

That means observations of revenues are only unique for a combination of `year`

-`week`

-`country`

-`product`

I would now like to estimate a model that includes fixed effects for the interaction of `country`

and `year`

and for each `product`

but cannot figure out how to do this:

- estimating via
`summary(lm(revenue~factor(paste(country,year)) + factor(product) + ..., data=df))`

fails for lack of memory because my data set is rather larger than the example above, which means I have to estimate something on the order of 1000 fixed effects - as far as I understand it panels are better estimated using the
`plm`

package but my case doesn't seem to fit neatly within the standard framework of a panel in which observations differ only across one time and one cross-sectional dimension each and fixed effects are estimated for each. I can generate a time index from`year`

and`week`

but that (a) still leaves me with two cross-sectional dimensions and (b) will give me fixed effects for each`year`

-`week`

interaction, which is rather more fine than I want it to be.

Are there any ways of estimating this with `plm`

or are there other packages which do this sort of thing? I know I could demean the data within the groups described above, estimate via `lm`

and then do a df-correction, but I'd rather avoid this.