Litcius/Paper detail

Multivariate‐bounded Gaussian mixture model with minimum message length criterion for model selection

Muhammad Azam, Nizar Bouguila

2021Expert Systems17 citationsDOI

Abstract

Abstract Bounded support Gaussian mixture model (BGMM) has been proposed for data modelling as an alternative to unbounded support mixture models for the cases when the data lies in bounded support. In this paper, we propose applications of multivariate BGMM in data clustering for more insightful analysis of the model. We also propose minimum message length (MML) criterion for model selection in data clustering using multivariate BGMM. The presented model is applied to data clustering in several speech (TSP and Spoken Digits) and image databases (MNIST and Fashion MNIST). We also propose the application of BGMM in code‐book generation at feature extraction phase. Inspired by the success of bag of visual words approach in computer vision, it is also introduced in speech data representation and validated through experiments presented in this paper. For validation of model selection criterion, MML is applied to different medical, speech and image datasets. Experimental results obtained during the model selection through MML are further compared with seven different model selection criteria. The results presented in the paper demonstrate the effectiveness of BGMM for clustering speech and image databases, code‐book generation through clustering for feature representation and model selection.

Topics & Concepts

Computer scienceMNIST databaseCluster analysisModel selectionMixture modelSelection (genetic algorithm)Artificial intelligenceRepresentation (politics)Pattern recognition (psychology)Feature selectionBounded functionData miningGaussianMachine learningArtificial neural networkMathematicsPoliticsPhysicsPolitical scienceMathematical analysisQuantum mechanicsLawBayesian Methods and Mixture ModelsAdvanced Clustering Algorithms ResearchImage Retrieval and Classification Techniques