I have created a model of some data which I believe will fall along a quadratic curve, I've written the full model as:
model <- lmer( DV ~ I(predictor^2) + predictor + (predictor | rand_effect), data = data, REML=FALSE )
and the comparison as:
modelcomp <- lmer( DV ~ (predictor | rand_effect), data = data, REML=FALSE )
When I use a likelihood ratio test using the anova function:
lrt <- anova(model, modelcomp)
I get a very high chi squared (57779.45) and a more concerning p value of exactly 0. It was my impression that p values generally couldn't be exactly 0. Why might this be? How do I correct my code so that it computes a sensible p value?