Similar to @mtoto, I am also not familiar with either `library(plm)`

or `library(gplm)`

. But the predict method for `plm`

is available, it's just not exported. `pglm`

does not have a predict method.

```
R> methods(class= "plm")
[1] ercomp fixef has.intercept model.matrix pFtest plmtest plot pmodel.response
[9] pooltest predict residuals summary vcovBK vcovHC vcovSCC
R> methods(class= "pglm")
no methods found
```

Of note, I do not understand why you are using a Poisson model for the wage data. It's clearly not a Poisson distribution since it takes non-integer values (below). You could try a negative binomial if you wish, though I'm not sure that's available with random effects. But you could use `MASS::glm.nb`

for instance.

```
> quantile(Unions$wage, seq(0,1,.1))
0% 10% 20% 30% 40% 50% 60% 70% 80% 90% 100%
0.02790139 2.87570334 3.54965422 4.14864865 4.71605855 5.31824370 6.01422463 6.87414349 7.88514525 9.59904809 57.50431282
```

### Solution 1: use `plm`

```
punions$p <- plm:::predict.plm(fit1, punions)
# From examining the source code, predict.plm does not incorporate
# the random effects, so you do not get appropriate predictions.
# You just get the FE predictions.
ggplot(punions, aes(x=exper, y=p)) +
geom_point() +
facet_wrap(rural ~ married)
```

### Solution 2 - `lme4`

Alternatively, you can get similar fits from the `lme4`

package, which does have a predict method defined:

```
library(lme4)
Unions$id <- factor(Unions$id)
fit3 <- lmer(wage ~ exper + rural + married + (1|id), data= Unions)
# not run:
fit4 <- glmer(wage ~ exper + rural + married + (1|id), data= Unions, family= poisson(link= "log"))
R> fit1$coefficients
(Intercept) exper ruralyes marriedyes
3.7467469 0.3088949 -0.2442846 0.4781113
R> fixef(fit3)
(Intercept) exper ruralyes marriedyes
3.7150302 0.3134898 -0.1950361 0.4592975
```

I haven't run the poisson models because it's clearly incorrectly specified. You could do some sort of variable transformation to handle it or perhaps a negative binomial. In any case, let's finish the example:

```
# this has RE for individuals, so you do see dispersion based on the RE
Unions$p <- predict(fit3, Unions)
ggplot(Unions, aes(x=exper, y=p)) +
geom_point() +
facet_wrap(rural ~ married)
```