AICc vs. Model Diagnostics #189
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I'm sure Bert can give you better advice...but to answer part of your question...you have a random effect that is shared between the species. So...when num.lv = 0, they still share a random effect...hence it is not the same as 5 independent GLMMs. Without the random effect, it would be. And I think that Bert will tell you that 2 LVs may be an overkill for your data....try 1. You can see in your residual plot that two species have very small residuals...that is a bit suspicious..and I guess you get a perfect fit for those species? Anyway...my 2 cents. Alain |
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I largely agree with Alain his answer. In principle you are right: the latent variables here are what "connect" the species, and Alain is right that the random site effect also does that. Two latent variables with a few species is probably overkill. That is also what looks like is happening from your residuals vs. species plot where all the residuals for the second and fourth species lay on a single point. How many observations per species do you have, and how many covariates are you including in the model? From the number of parameters it looks like around 5-6 covariates. If you really want to create an ordination plot (which sometimes you just do, and that is OK with me), looking at information criteria might not be the right way to go. AIC(c) helps you to find a model that might predict well, but it will not help you (much) in finding a model for inference. You will have to find a way to improve the residual plots though, by adjusting your model. |
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I largely agree with Alain his answer.
In principle you are right: the latent variables here are what "connect" the species, and Alain is right that the random site effect also does that.
Two latent variables with a few species is probably overkill. That is also what looks like is happening from your residuals vs. species plot where all the residuals for the second and fourth species lay on a single point. How many observations per species do you have, and how many covariates are you including in the model? From the number of parameters it looks like around 5-6 covariates.
If you really want to create an ordination plot (which sometimes you just do, and that is OK with me), looking at inf…