Title :
Unsupervised Learning of Gaussian Mixtures Based on Variational Component Splitting
Author :
Constantinopoulos, C. ; Likas, A.
Author_Institution :
Dept. of Comput. Sci., Ioannina Univ.
fDate :
5/1/2007 12:00:00 AM
Abstract :
In this paper, we present an incremental method for model selection and learning of Gaussian mixtures based on the recently proposed variational Bayes approach. The method adds components to the mixture using a Bayesian splitting test procedure: a component is split into two components and then variational update equations are applied only to the parameters of the two components. As a result, either both components are retained in the model or one of them is found to be redundant and is eliminated from the model. In our approach, the model selection problem is treated locally, in a region of the data space, so we can set more informative priors based on the local data distribution. A modified Bayesian mixture model is presented to implement this approach, along with a learning algorithm that iteratively applies a splitting test on each mixture component. Experimental results and comparisons with two other techniques testify for the adequacy of the proposed approach
Keywords :
Bayes methods; Gaussian processes; unsupervised learning; variational techniques; Bayesian splitting test procedure; Gaussian mixtures; data distribution; incremental method; model selection problem; modified Bayesian mixture model; unsupervised learning; variational Bayes approach; variational component splitting; variational update equations; Bayesian methods; Clustering algorithms; Computer science education; Covariance matrix; Educational programs; Equations; Optimization methods; Stability; Testing; Unsupervised learning; Clustering; mixture models; model selection; variational Bayes methods; Algorithms; Artificial Intelligence; Bayes Theorem; Computer Simulation; Decision Support Techniques; Information Storage and Retrieval; Models, Theoretical; Neural Networks (Computer); Normal Distribution; Pattern Recognition, Automated;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2006.891114