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Approximation of Convex Envelope Using Reinforcement Learning
Published 24 Nov 2023 in eess.SY, cs.LG, and cs.SY | (2311.14421v1)
Abstract: Oberman gave a stochastic control formulation of the problem of estimating the convex envelope of a non-convex function. Based on this, we develop a reinforcement learning scheme to approximate the convex envelope, using a variant of Q-learning for controlled optimal stopping. It shows very promising results on a standard library of test problems.
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