Publication | Open Access
Guaranteed Bounds on Information-Theoretic Measures of Univariate Mixtures Using Piecewise Log-Sum-Exp Inequalities
25
Citations
31
References
2016
Year
Mathematical ProgrammingStatistical Signal ProcessingMixture DistributionEngineeringInformation TheoryData ScienceDensity EstimationEntropyGaussian MixturesMixture AnalysisKullback-leibler DivergenceSignal ProcessingStatistical InferenceProbability TheoryMathematical StatisticStatisticsInformation-theoretic MeasuresGamma Mixtures
Information-theoretic measures such as the entropy, cross-entropy and the Kullback-Leibler divergence between two mixture models is a core primitive in many signal processing tasks. Since the Kullback-Leibler divergence of mixtures provably does not admit a closed-form formula, it is in practice either estimated using costly Monte-Carlo stochastic integration, approximated, or bounded using various techniques. We present a fast and generic method that builds algorithmically closed-form lower and upper bounds on the entropy, the cross-entropy and the Kullback-Leibler divergence of mixtures. We illustrate the versatile method by reporting on our experiments for approximating the Kullback-Leibler divergence between univariate exponential mixtures, Gaussian mixtures, Rayleigh mixtures, and Gamma mixtures.
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