# Order lattice panel by regression intercept

Example dataset here

Let us build a simple lattice plot from this data for linear regression, with separate panels for each Subject

`````` xyplot(Measurement~HOL|Subject,groups=Treatment,data=Data,
type=c('p','r'),auto.key=T,aspect="xy")
``````

The issue is, I would like to visually inspect if the slopes-and-intercepts are correlated. Thus, I would like to order the panels by linear-regression intercept as opposed to by Subject (this was done in Douglas Bates' book "lme4: Mixed-effects modeling with R" Figure 3.1, but I cannot find example code). I know I can change the order of panels by hand by adding

``````index.cond=list(c(1,2,3, etc))
``````

But this is extraordinarily inefficient, especially since I would like to do this for multiple response variables.

Does anyone have an automated way to do this? I am also open to attempting this in ggplot2 if it has any built in functions, but as I understand, there is no way to easily change the aspect to a 45degree such as the

``````aspect="xy"
``````

does in Lattice.

Thank you in advance for any thoughts

If you want to order by regression intercept, it's best to run the regression. For example, with your data we can do

``````cf<-sapply(Data\$Subject, function(x)
coef(lm(Measurement~HOL, data=subset(Data, Subject==x))))
``````

which will give a slope/intercept for each person, we can then create a new factor of Subjects ordered by the intercept with

``````Sx<-reorder(Data\$Subject, cf[1,])
``````

and then use that variable as the grouping variable in the plot

``````xyplot(Measurement~HOL|Sx,groups=Treatment,data=Data,
type=c('p','r'),auto.key=T,aspect="xy")
``````

And in `ggplot` you can fix the ratio of `x/y` with `+coord_fixed(ratio=1)`

• Very nice! I was thinking I would have to do an approach like this. I'd upvote your Answer, but do not have sufficient reputation... Jun 30, 2014 at 16:07