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Bayesian clustering of high-dimensional data via latent repulsive mixtures

Author

Listed:
  • L Ghilotti
  • M Beraha
  • A Guglielmi

Abstract

SummaryModel-based clustering of moderate- or large-dimensional data is notoriously difficult. We propose a model for simultaneous dimensionality reduction and clustering by assuming a mixture model for a set of latent scores, which are then linked to the observations via a Gaussian latent factor model. This approach was recently investigated by Chandra et al. (2023). The authors used a factor-analytic representation and assumed a mixture model for the latent factors. However, performance can deteriorate in the presence of model misspecification. Assuming a repulsive point process prior for the component-specific means of the mixture for the latent scores is shown to yield a more robust model that outperforms the standard mixture model for the latent factors in several simulated scenarios. The repulsive point process must be anisotropic to favour well-separated clusters of data, and its density should be tractable for efficient posterior inference. We address these issues by proposing a general construction for anisotropic determinantal point processes. We illustrate our model in simulations, as well as a plant species co-occurrence dataset.

Suggested Citation

  • L Ghilotti & M Beraha & A Guglielmi, 2025. "Bayesian clustering of high-dimensional data via latent repulsive mixtures," Biometrika, Biometrika Trust, vol. 112(2), pages 551-558.
  • Handle: RePEc:oup:biomet:v:112:y:2025:i:2:p:551-8.
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    File URL: http://hdl.handle.net/10.1093/biomet/asae059
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