I have a "long" dataframe defined as:

```
q <- data.frame(Indicator.Code=factor(),Year=numeric(),Value=numeric())
```

and am trying to plot in a single xyplot the values as a function of the year, for each different `Indicator.Code`

, as follows

```
xyplot( Value~Year,data=q,group=Indicator.Code)
```

So far, so good. Now I am trying to add lines corresponding to the linear regressions

```
rlm(q$Value[q$Indicator.Code==a]~q$Year[q$Indicator.Code==a])
```

for all the values of `Indicator.Code`

.

I do not know how to do it. The usual way to add regression lines, i.e

```
xyplot( Value~Year,data=q,group=Indicator.Code),
panel = function(x, y) {
panel.xyplot(x, y)
panel.abline(rlm(y ~ x))
}))
```

does not work properly (it computes a single regression, and adds a single regression line, for the whole dataset). Besides, I have already computed the regressions (I need them for things other than graphics too), and hate the idea of having to recompute them.

Any hints a novice could follow?

`Value~Year|Indicator.Code`

(without "group=Indicator.Code") it would have given you separate calculation and plots. – BondedDust May 3 '13 at 15:16