I want to use linear mixed model and make predictions on population level (i.e. using only fixed effects and using 0 instead of random effects).

Example model:

```
require(lme4)
fm1 <- lmer(Reaction ~ Days + (Days | Subject), sleepstudy)
summary(fm1)
# values for prediction:
newx <- seq(min(sleepstudy$Days), max(sleepstudy$Days))
```

I tried several methods of the prediction on population level but they all failed:

```
pred <- predict(fm1, newdata = data.frame(Days = newx), allow.new.levels = TRUE)
# Error: couldn't evaluate grouping factor Subject within model frame: try adding grouping factor to data frame explicitly if possible
pred <- predict(fm1, newdata = data.frame(Days = newx, Subject = NA), allow.new.levels = TRUE)
# Error: Invalid grouping factor specification, Subject
pred <- predict(fm1, newdata = data.frame(Days = newx, Subject = as.factor(NA)), allow.new.levels = TRUE)
# Error: Invalid grouping factor specification, Subject
```

I tried to find the manual for the proper prediction method, but I don't know how? I tried to look at `help(package = "lme4")`

and the closest function I found was `predict.merMod`

(though the class of model `fm1`

is `lmerMod`

not `merMod`

). `?predict.merMod`

reads:

allow.new.levels(logical) if FALSE (default), then any new levels (or NA values) detected in newdata will trigger an error; if TRUE, then the prediction will use the unconditional (population-level) values for data with previously unobserved levels (or NAs)

It specifically says "or NAs", but it apparently doesn't work that way!!

- Am I looking at the help page of a proper method? If not, what is the right method?
- How to make the prediction work on the population level?