Theofania-Sotiria Patsiou, Φαίη Πάτσιου
2019-May-31 01:44 UTC
[R] MCMCglmm model set-up and interpretation
Dear list, I am new to MCMCglmm and I am trying to test in my data whether there is a significant plot effect (and of which plot) on each treatment per group of species while accounting for phylogenetic relatedness. My data is structured as follows: Species: 100 species Species type: 3 levels Treatments: 3 levels Plots: 14 levels Response variable Y: continuous What I have done is to fit the following model (after testing for various priors I came up with the following expanded one) prior.exp <- list(G = list(G1 = list(V = 1, nu = 1e+06, alpha.mu=0, alpha. V=1000)), R = list(V =1, nu = 1e+06)) fit.mod = MCMCglmm(log(Y) ~ -1 + Treatment + Plot + Group + Group* Treatment * Plot, random = ~Species , ginverse = list(Species = ainv01), data input, family = "gaussian", nitt = 5e+06, burnin =6000, thin = 150, prior = prior.exp ,verbose=F) 1) Is this syntax correct to extract the effect of the plot on the treatment per group of species or should I use Group:Treatment:Plot as they are more like nested effects? Is it correct removing the intercept here? 2) The model summary comes up with CI per treatment for all treatment types but for the Group and Treatment, one of the levels is kept for comparison and is missing. This is confusing for more than 2 factors with more than 3 levels interaction, as I cannot figure out which factor's level is kept as the reference for the given CI. 3) For the overall interaction of the 3 categorical variables, the summary comes up with specific factor levels and not the overall effect of each variable or their interactions. Many thanks in advance! Faye. [[alternative HTML version deleted]]