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Sparse Count Data Clustering Using an Exponential Approximation to Generalized Dirichlet Multinomial Distributions

Nuha Zamzami, Nizar Bouguila

2020IEEE Transactions on Neural Networks and Learning Systems14 citationsDOI

Abstract

Clustering frequency vectors is a challenging task on large data sets considering its high dimensionality and sparsity nature. Generalized Dirichlet multinomial (GDM) distribution is a competitive generative model for count data in terms of accuracy, yet its parameters estimation process is slow. The exponential-family approximation of the multivariate Polya distribution has shown to be efficient to train and cluster data directly, without dimensionality reduction. In this article, we derive an exponential-family approximation to the GDM distributions, and we call it (EGDM). A mixture model is developed based on the new member of the exponential-family of distributions, and its parameters are learned through the deterministic annealing expectation-maximization (DAEM) approach as a new clustering algorithm for count data. Moreover, we propose to estimate the optimal number of EGDM mixture components based on the minimum message length (MML) criterion. We have conducted a set of empirical experiments, concerning text, image, and video clustering, to evaluate the proposed approach performance. Results show that the new model attains a superior performance, and it is considerably faster than the corresponding method for GDM distributions.

Topics & Concepts

Cluster analysisCount dataMultinomial distributionMathematicsDirichlet distributionDirichlet processMixture modelCurse of dimensionalityExponential familyAlgorithmData setSet (abstract data type)Empirical distribution functionMathematical optimizationExponential functionk-medians clusteringStatisticsDetermining the number of clusters in a data setGeneralized Dirichlet distributionComputer sciencePattern recognition (psychology)Expectation–maximization algorithmPrior probabilityApplied mathematicsLatent Dirichlet allocationMixture distributionEstimation theoryProbability distributionGenerative modelLaplace distributionHierarchical Dirichlet processDistribution (mathematics)Statistical modelExponential distributionMultivariate normal distributionClustering high-dimensional dataProcess (computing)Data modelingk-means clusteringArtificial intelligenceBayesian Methods and Mixture ModelsAdvanced Clustering Algorithms ResearchFace and Expression Recognition