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Gaussian parsimonious clustering models with covariates and a noise component
Author(s)
Date Issued
2019-09-20
Date Available
2024-02-26T10:14:09Z
Abstract
We consider model-based clustering methods for continuous, correlated data that account for external information available in the presence of mixed-type fixed covariates by proposing the MoEClust suite of models. These models allow different subsets of covariates to influence the component weights and/or component densities by modelling the parameters of the mixture as functions of the covariates. A familiar range of constrained eigen-decomposition parameterisations of the component covariance matrices are also accommodated. This paper thus addresses the equivalent aims of including covariates in Gaussian parsimonious clustering models and incorporating parsimonious covariance structures into all special cases of the Gaussian mixture of experts framework. The MoEClust models demonstrate significant improvement from both perspectives in applications to both univariate and multivariate data sets. Novel extensions to include a uniform noise component for capturing outliers and to address initialisation of the EM algorithm, model selection, and the visualisation of results are also proposed.
Sponsorship
Science Foundation Ireland
Other Sponsorship
Insight Research Centre
Type of Material
Journal Article
Publisher
Springer
Journal
Advances in Data Analysis & Classification
Volume
14
Start Page
293
End Page
325
Copyright (Published Version)
2019 Springer
Language
English
Status of Item
Peer reviewed
This item is made available under a Creative Commons License
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Name
Gaussian Parsimonious Clustering Models with Covariates and a Noise Component.pdf
Size
2.19 MB
Format
Adobe PDF
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