I am trying to predict values over time (Days in x axis) for a glmer model that was run on my binomial data. Total Alive and Total Dead are count data. This is my model, and the corresponding steps below.


We have accounted for overdispersion as you can see in the code (1:index).

We then use the dredge command to determine the best fitted models with the main effects (CO2.Treatment, Lime.Treatment, Day) and their corresponding interactions.


Then made a workspace variable for them


We then conducted a model average to average the coefficients for the best fit models


But now I want to create a graph, with the Total Alive on the Y axis, and Days on the X axis, and a fitted line depending on the output of the model. I understand this is tricky because the model concatenated the Total.Alive and Total.Dead (see cbind(Total.Alive,Total.Dead) in the model.

When I try to run a predict command I get the error

# 9: In UseMethod("predict") :
#   no applicable method for 'predict' applied to an object of class "mer"

Most of your problem is that you're using a pre-1.0 version of lme4, which doesn't have the predict method implemented. (Updating would be easiest, but I believe that if you can't for some reason, there's a recipe at http://glmm.wikidot.com/faq for doing the predictions by hand by extracting the fixed-effect design matrix and the coefficients ...)There's actually not a problem with the predictions, which predict the log-odds (by default) or the probability (if type="response"); if you wanted to predict numbers, you'd have to multiply by N appropriately.

You didn't give one, but here's a reproducible (albeit somewhat trivial) example using the built-in cbpp data set (I do get some warning messages -- no non-missing arguments to max; returning -Inf -- but I think this may be due to the fact that there's only one non-trivial fixed-effect parameter in the model?)

packageVersion("lme4")  ## 1.1.4, but this should work as long as >1.0.0

It's convenient for later use (with ggplot) to add a variable for the proportion:

cbpp <- transform(cbpp,prop=incidence/size)

Fit the model (you could also use glmer(prop~..., weights=size, ...))

gm0 <- glmer(cbind(incidence, size - incidence) ~ period+(1|herd),
           family = binomial, data = cbpp)

Prediction does work:


Creating a plot:

theme_set(theme_bw())  ## cosmetic
g0 <- ggplot(cbpp,aes(period,prop))+

Set up a prediction frame:

predframe <- data.frame(period=levels(cbpp$period))

Predict at the population level (ReForm=NA -- this may have to be REForm=NA in lme4 `1.0.5):

predframe$prop <- predict(gm0,newdata=predframe,type="response",ReForm=NA)

Add it to the graph:

g0 + geom_point(data=predframe,colour="red")+

enter image description here

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