Publication | Open Access
Bregman divergence as general framework to estimate unnormalized statistical models
36
Citations
14
References
2011
Year
Ratio MatchingEngineeringMachine LearningMathematical StatisticEnsemble AlgorithmUnsupervised Machine LearningBregman DivergenceData SciencePattern RecognitionEstimation TheorySemi-supervised LearningStatisticsSupervised LearningKnowledge DiscoveryStatistical Learning TheoryFunctional Data AnalysisHigh-dimensional MethodStatistical InferenceSemi-nonparametric Estimation
We show that the Bregman divergence provides a rich framework to estimate unnormalized statistical models for continuous or discrete random variables, that is, models which do not integrate or sum to one, respectively. We prove that recent estimation methods such as noise-contrastive estimation, ratio matching, and score matching belong to the proposed framework, and explain their interconnection based on supervised learning. Further, we discuss the role of boosting in unsupervised learning.
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