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Generative Adversarial Network for Probabilistic Forecast of Random Dynamical Systems

Kyongmin Yeo, Zan Li, Wesley M. Gifford

2022SIAM Journal on Scientific Computing12 citationsDOI

Abstract

We present a deep learning model for data-driven simulations of random dynamical systems without a distributional assumption. The deep learning model consists of a recurrent neural network, which aims to learn the time marching structure, and a generative adversarial network to learn and sample from the probability distribution of the random dynamical system. Although generative adversarial networks provide a powerful tool to model a complex probability distribution, the training often fails without a proper regularization. Here, we propose a regularization strategy for a generative adversarial network based on consistency conditions for the sequential inference problems. First, the maximum mean discrepancy (MMD) is used to enforce the consistency between conditional and marginal distributions of a stochastic process. Then, the marginal distributions of the multiple-step predictions are regularized by using MMD or from multiple discriminators. The behavior of the proposed model is studied by using three stochastic processes with complex noise structures.

Topics & Concepts

Marginal distributionRegularization (linguistics)Consistency (knowledge bases)InferenceArtificial intelligenceProbabilistic logicMathematicsJoint probability distributionProbability distributionConditional probability distributionAdversarial systemDynamical systems theoryPrior probabilityComputer scienceMachine learningRandom variableBayesian probabilityEconometricsStatisticsQuantum mechanicsPhysicsModel Reduction and Neural NetworksGaussian Processes and Bayesian InferenceGenerative Adversarial Networks and Image Synthesis
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