Edit - Rewrote question since the original did not makes sense:

In R - how would I go about getting a lm fit model that is a quotient of sums for two variables grouped by a third factor variable, but that weights some entries more than others? Data looks like:

```
Browser Visits Clicks
Chrome 100 25
Chrome 89 40
Chrome 10 0
Safari 40 10
Safari 30 2
```

From the comments this is the command for the WLS regression weighted by visits, but I don't think I'm using the weight function right since I don't know how the errors are correlated with visits, just that they are.

```
fit <- lm(Clicks/Visits ~ Browser, weights=(visits/sum(visits)))
```

`lm(Clicks/Visits ~ Browser)`

– Ramnath Sep 12 '11 at 21:35`lm`

has a`weights`

argument, as it happens. – joran Sep 12 '11 at 22:15