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Geometrically Coupled Monte Carlo Sampling

Mark Rowland
François Chalus
Aldo Pacchiano
Richard E. Turner
Adrian Weller
Advances in Neural Information Processing Systems 31 (NIPS 2018)

Abstract

Monte Carlo sampling in high-dimensional, low-sample settings is important in many machine learning tasks. We improve current methods for sampling in Euclidean spaces by avoiding independence, and instead consider ways to couple samples. We show fundamental connections to optimal transport theory, leading to novel sampling algorithms, and providing new theoretical grounding for existing strategies. We compare our new strategies against prior methods for improving sample efficiency, including QMC, by studying discrepancy. We explore our findings empirically, and observe benefits of our sampling schemes for reinforcement learning and generative modelling.

Research Areas