Home
Scholarly Works
Finite Mixtures of Multivariate Poisson-Log Normal...
Preprint

Finite Mixtures of Multivariate Poisson-Log Normal Factor Analyzers for Clustering Count Data

Abstract

A mixture of multivariate Poisson-log normal factor analyzers is introduced by imposing constraints on the covariance matrix, which resulted in flexible models for clustering purposes. In particular, a class of eight parsimonious mixture models based on the mixtures of factor analyzers model are introduced. Variational Gaussian approximation is used for parameter estimation, and information criteria are used for model selection. The proposed models are explored in the context of clustering discrete data arising from RNA sequencing studies. Using real and simulated data, the models are shown to give favourable clustering performance. The GitHub R package for this work is available at https://github.com/anjalisilva/mixMPLNFA and is released under the open-source MIT license.

Authors

Payne A; Silva A; Rothstein SJ; McNicholas PD; Subedi S

Publication date

November 13, 2023

DOI

10.48550/arxiv.2311.07762

Preprint server

arXiv

Labels

View published work (Non-McMaster Users)

Contact the Experts team