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Variational Information Bottleneck for Unsupervised Clustering: Deep Gaussian Mixture Embedding

Yiğit Uğur, George Arvanitakis, Abdellatif Zaidi

2020Entropy18 citationsDOIOpen Access PDF

Abstract

In this paper, we develop an unsupervised generative clustering framework that combines the variational information bottleneck and the Gaussian mixture model. Specifically, in our approach, we use the variational information bottleneck method and model the latent space as a mixture of Gaussians. We derive a bound on the cost function of our model that generalizes the Evidence Lower Bound (ELBO) and provide a variational inference type algorithm that allows computing it. In the algorithm, the coders' mappings are parametrized using neural networks, and the bound is approximated by Markov sampling and optimized with stochastic gradient descent. Numerical results on real datasets are provided to support the efficiency of our method.

Topics & Concepts

Information bottleneck methodCluster analysisEmbeddingBottleneckUpper and lower boundsGaussianMixture modelComputer scienceAlgorithmInferenceMathematicsFunction (biology)Artificial neural networkMutual informationGenerative modelMarkov chainArtificial intelligenceUnsupervised learningFunction spaceMathematical optimizationSpace (punctuation)Sampling (signal processing)Variational methodApplied mathematicsMarkov processInformation theoryVariational principlePattern recognition (psychology)Gaussian processGaussian Processes and Bayesian InferenceBayesian Methods and Mixture ModelsStochastic Gradient Optimization Techniques