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Comparing Partitioned Models to Mixture Models: Do Information Criteria Apply?

Stephen Crotty, Barbara R. Holland

2022Systematic Biology27 citationsDOIOpen Access PDF

Abstract

The use of information criteria to distinguish between phylogenetic models has become ubiquitous within the field. However, the variety and complexity of available models are much greater now than when these practices were established. The literature shows an increasing trajectory of healthy skepticism with regard to the use of information theory-based model selection within phylogenetics. We add to this by analyzing the specific case of comparison between partition and mixture models. We argue from a theoretical basis that information criteria are inherently more likely to favor partition models over mixture models, and we then demonstrate this through simulation. Based on our findings, we suggest that partition and mixture models are not suitable for information-theory based model comparison. [AIC, BIC; information criteria; maximum likelihood; mixture models; partitioned model; phylogenetics.].

Topics & Concepts

Model selectionMixture modelPartition (number theory)Information CriteriaPhylogenetic treeMaximum likelihoodSelection (genetic algorithm)Information theoryComputer scienceBiologyArtificial intelligenceEconometricsMachine learningStatisticsMathematicsCombinatoricsGeneBiochemistryEvolution and Paleontology StudiesGenomics and Phylogenetic StudiesSpecies Distribution and Climate Change
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