I have a panel of data with year, country, and firm identifiers. I would like to fit logit models to each year-country subset using `data.table`

. I don't have a problem if I have enough entries in each year-country subset to fit a model, but if there are not enough data in a year-country subset, then `glm`

throws an error and I can't fit all the models. (I get essentially the same error with `lm`

.)

Is there a solution within `data.table`

? Or should I groom my data upstream to make sure there are no year-country subsets without insufficient data?

Thanks!

```
library(data.table)
# similar data
DT <- data.table(year=rep(2001:2010, each=100),
country=rep(rep(1:10, each=10), 10),
firm=rep(1:100, 10),
y=round(runif(100)),
x=runif(100)
)
setkey(DT, year, country)
# no problems if there are enough data per year-country subset
DT2 <- DT[, as.list(coef(glm(y ~ x), family="binomial")), by="year,country"]
# but `lm` throws and error if there are missing data
DT[(DT$year == 2001) & (DT$country == 1), "y"] <- NA
DT3 <- DT[, as.list(coef(glm(y ~ x, family="binomial"))), by="year,country"]
```

yields

```
> DT3 <- DT[, as.list(coef(glm(y ~ x, family="binomial"))), by="year,country"]
Error in family$linkfun(mustart) :
Argument mu must be a nonempty numeric vector
```