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Flow Contrastive Estimation of Energy-Based Models

Ruiqi Gao, Erik Nijkamp, Diederik P. Kingma, Zhen Xu, Andrew M. Dai, Ying Wu

202063 citationsDOI

Abstract

This paper studies a training method to jointly estimate an energy-based model and a flow-based model, in which the two models are iteratively updated based on a shared adversarial value function. This joint training method has the following traits. (1) The update of the energy-based model is based on noise contrastive estimation, with the flow model serving as a strong noise distribution. (2) The update of the flow model approximately minimizes the Jensen-Shannon divergence between the flow model and the data distribution. (3) Unlike generative adversarial networks (GAN) which estimates an implicit probability distribution defined by a generator model, our method estimates two explicit probabilistic distributions on the data. Using the proposed method we demonstrate a significant improvement on the synthesis quality of the flow model, and show the effectiveness of unsupervised feature learning by the learned energy-based model. Furthermore, the proposed training method can be easily adapted to semi-supervised learning. We achieve competitive results to the state-of-the-art semi-supervised learning methods.

Topics & Concepts

Computer scienceDivergence (linguistics)Probabilistic logicFlow (mathematics)Artificial intelligenceGenerator (circuit theory)Feature (linguistics)Machine learningNoise (video)Joint probability distributionEnergy (signal processing)Generative modelStatistical modelPattern recognition (psychology)Generative grammarPower (physics)MathematicsStatisticsImage (mathematics)GeometryQuantum mechanicsPhilosophyPhysicsLinguisticsGenerative Adversarial Networks and Image SynthesisModel Reduction and Neural NetworksMusic and Audio Processing
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