Detecting Jumps on a Tree: a Hierarchical Pitman-Yor Model for Evolution of Phenotypic Distributions
This work focuses on clustering populations with a hierarchical dependency structure that can be described by a tree. A particular example that is the focus of our work is the phylogenetic tree, with nodes often representing biological species. Clustering of the populations in this problem is equiva...
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Zusammenfassung: | This work focuses on clustering populations with a hierarchical dependency
structure that can be described by a tree. A particular example that is the
focus of our work is the phylogenetic tree, with nodes often representing
biological species. Clustering of the populations in this problem is equivalent
to identify branches in the tree where the populations at the parent and child
node have significantly different distributions. We construct a nonparametric
Bayesian model based on hierarchical Pitman-Yor and Poisson processes to
exploit this hierarchical structure, with a key contribution being the ability
to share statistical information between subpopulations. We develop an
efficient particle MCMC algorithm to address computational challenges involved
with posterior inference. We illustrate the efficacy of our proposed approach
on both synthetic and real-world problems. |
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DOI: | 10.48550/arxiv.2302.13508 |