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      <title>Analyzing the antTraits data with gllvm</title>
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      <description>body { text-align: justify}  In this post we will analyze the antTraits data with generalized linear latent variable models fit with the gllvm R package (Niku et al. 2020). Elsewhere on the blog you can find an analysis of the same data using mvabund and boral.
First of we will setup the analysis by loading the required libraries. If you haven’t already done so, you will need to install the pacman R package before running this code.</description>
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