I am trying to incorporate generalized additive models `gam()`

from `mgcv`

package to either `xyplot()`

function or `coplot()`

function from `lattice`

package in R.

The data can be found in http://statweb.stanford.edu/~tibs/ElemStatLearn/, by selecting ozone data.

Here are my code for kernel smoothing.

```
ozonedata=ozone
Temperature=equal.count(ozonedata$temperature,4,1/2)
Wind=equal.count(ozonedata$wind,4,1/2)
xyplot(ozone^(1/3) ~ radiation | Temperature * Wind, data = ozonedata, as.table = TRUE,
panel = function(x, y, ...) {panel.xyplot(x, y, ...);panel.loess(x, y)},
pch = 20,xlab = "Solar Radiation", ylab = "Ozone (ppb)")
```

or

```
coplot((ozone^(1/3))~radiation|temperature*wind,data=ozonedata,number=c(4,4),
panel = function(x, y, ...) panel.smooth(x, y, span = .8, ...),
xlab="Solar radiation (langleys)", ylab="Ozone (cube root ppb)")
```

The generalized additive models is generated as following.

```
gam_ozone = gam(ozone^(1/3)~s(radiation)+s(temperature)+s(wind),data=ozonedata,method="GCV.Cp")
```

Now I am having a trouble combining fitting from `gam()`

into lattice plots.