I am using `lmer`

to fit a multilevel polynomial regression model with several fixed effects (including subject-specific variables like age, short-term memory span, etc.) and two sets of random effects (Subject and Subject:Condition). Now I would like to predict data for a hypothetical subject with particular properties (age, short-term memory span, etc.). I fit the model (`m`

) and created a new data frame (`pred`

) that contains my hypothetical subject, but when I tried `predict(m, pred)`

I got an error:

```
Error in UseMethod("predict") :
no applicable method for 'predict' applied to an object of class "mer"
```

I know I could use the brute-force method of extracting fixed effects from my model and multiplying it all out, but is there a more elegant solution?

`lme4Eigen`

package (on r-forge, soon (?) to be on CRAN as lme4) has a`predict`

method, if you're willing to try it out (you can always compare your answers with`lme4`

-- and please let the developers know if they differ!) – Ben Bolker Feb 29 '12 at 3:17`predict`

method when I get a chance. – Dan M. Feb 29 '12 at 13:34