A Bayesian latent allocation model for clustering compositional data with application to the Great Barrier Reef
Luiza Piancastelli, Nial Friel, Julie Vercelloni, Kerrie Mengersen,, Antonietta Mira

TL;DR
This paper introduces a Bayesian mixture model for clustering compositional ecological data, applied to coral reef communities, revealing spatial and temporal changes in community structure influenced by environmental stressors.
Contribution
It develops a Bayesian Dirichlet mixture model tailored for compositional data, capturing dependence structures and temporal dynamics in ecological clustering.
Findings
Clusters became fewer over time, indicating homogenization.
Spatial distribution of clusters suggests influence of wave exposure.
Rapid community changes threaten GBR biodiversity.
Abstract
Relative abundance is a common metric to estimate the composition of species in ecological surveys reflecting patterns of commonness and rarity of biological assemblages. Measurements of coral reef compositions formed by four communities along Australia's Great Barrier Reef (GBR) gathered between 2012 and 2017 are the focus of this paper. We undertake the task of finding clusters of transect locations with similar community composition and investigate changes in clustering dynamics over time. During these years, an unprecedented sequence of extreme weather events (cyclones and coral bleaching) impacted the 58 surveyed locations. The dependence between constituent parts of a composition presents a challenge for existing multivariate clustering approaches. In this paper, we introduce a finite mixture of Dirichlet distributions with group-specific parameters, where cluster memberships are…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Geochemistry and Geologic Mapping · Data-Driven Disease Surveillance
