An Efficient Model Selection for Gaussian Mixture Model in a Bayesian
Framework
In order to cluster or partition data, we often use Expectation-and-Maximization (EM) or Variational approximation with a Gaussian Mixture Model (GMM), which is a parametric probability density function represented as a weighted sum of Gaussian component densities. However, model selection to find underlying is one of the key concerns in GMM clustering, since we can obtain the desired clusters only when is known. In this paper, we propose a new model selection algorithm to explore in a Bayesian framework. The proposed algorithm builds the density of the model order which any information criterions such as AIC and BIC basically fail to reconstruct. In addition, this algorithm reconstructs the density quickly as compared to the time-consuming Monte Carlo simulation.
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