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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?

share|improve this question
Possible duplicate: – Vincent Zoonekynd Feb 28 '12 at 23:30
the bleeding-edge 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
Thanks, the FAQ link was very helpful and I'll try the new predict method when I get a chance. – Dan M. Feb 29 '12 at 13:34

You can do this type of extrapolated prediction easily with the merTools package for R:

merTools includes a function called predictInterval which provides robust prediction capabilities for lmer and glmer fits. Specifically, you can use this function to predict extrapolated data, and to obtain prediction intervals that account for the variance in both the fixed and random effects, as well as the residual error of the model.

Here's a quick code example:

m1 <- lmer(Reaction ~ Days + (1|Subject), data = sleepstudy)
predOut <- predictInterval(m1, newdata = sleepstudy, n.sims = 100)
# extrapolated data
extrapData <- sleepstudy[1:10,]
extrapData$Days <- 20
extrapPred <- predictInterval(m1, newdata = extrapData)
share|improve this answer
for what it's worth you can get the prediction itself (not the confidence intervals) via lme4::predict(m1, newdata=extrapData) (the question above is pretty old), although I do see the value of predictInterval. – Ben Bolker Aug 12 '15 at 15:32
Yes, the question is pretty old, and by now lme4::predict(m1, newdata=extrapData) works great. Agreed @BenBolker! – jknowles Aug 13 '15 at 14:18

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