A survey on Bayesian inference for Gaussian mixture model
Jun Lu

TL;DR
This survey provides a comprehensive introduction to Bayesian inference methods for Gaussian mixture models, highlighting their mathematical foundations, key concepts, and applications in unsupervised learning.
Contribution
It offers a self-contained, rigorous overview of Bayesian techniques for finite and infinite Gaussian mixture models, emphasizing their significance and applications.
Findings
Summarizes Bayesian inference concepts for Gaussian mixture models
Highlights the importance of Dirichlet priors and Chinese restaurant process
Provides rigorous proofs and mathematical tools
Abstract
Clustering has become a core technology in machine learning, largely due to its application in the field of unsupervised learning, clustering, classification, and density estimation. A frequentist approach exists to hand clustering based on mixture model which is known as the EM algorithm where the parameters of the mixture model are usually estimated into a maximum likelihood estimation framework. Bayesian approach for finite and infinite Gaussian mixture model generates point estimates for all variables as well as associated uncertainty in the form of the whole estimates' posterior distribution. The sole aim of this survey is to give a self-contained introduction to concepts and mathematical tools in Bayesian inference for finite and infinite Gaussian mixture model in order to seamlessly introduce their applications in subsequent sections. However, we clearly realize our inability…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Statistical Distribution Estimation and Applications · Statistical Methods and Bayesian Inference
