English

A parallelizable model-based approach for marginal and multivariate clustering

Machine Learning 2022-12-09 v1 Machine Learning Methodology

Abstract

This paper develops a clustering method that takes advantage of the sturdiness of model-based clustering, while attempting to mitigate some of its pitfalls. First, we note that standard model-based clustering likely leads to the same number of clusters per margin, which seems a rather artificial assumption for a variety of datasets. We tackle this issue by specifying a finite mixture model per margin that allows each margin to have a different number of clusters, and then cluster the multivariate data using a strategy game-inspired algorithm to which we call Reign-and-Conquer. Second, since the proposed clustering approach only specifies a model for the margins -- but leaves the joint unspecified -- it has the advantage of being partially parallelizable; hence, the proposed approach is computationally appealing as well as more tractable for moderate to high dimensions than a `full' (joint) model-based clustering approach. A battery of numerical experiments on artificial data indicate an overall good performance of the proposed methods in a variety of scenarios, and real datasets are used to showcase their application in practice.

Keywords

Cite

@article{arxiv.2212.04009,
  title  = {A parallelizable model-based approach for marginal and multivariate clustering},
  author = {Miguel de Carvalho and Gabriel Martos Venturini and Andrej Svetlošák},
  journal= {arXiv preprint arXiv:2212.04009},
  year   = {2022}
}
R2 v1 2026-06-28T07:25:21.976Z