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Continuous‐time mean–variance portfolio selection: A reinforcement learning framework

Haoran Wang, Xun Yu Zhou

2020Mathematical Finance131 citationsDOI

Abstract

Abstract We approach the continuous‐time mean–variance portfolio selection with reinforcement learning (RL). The problem is to achieve the best trade‐off between exploration and exploitation, and is formulated as an entropy‐regularized, relaxed stochastic control problem. We prove that the optimal feedback policy for this problem must be Gaussian, with time‐decaying variance. We then prove a policy improvement theorem, based on which we devise an implementable RL algorithm. We find that our algorithm and its variant outperform both traditional and deep neural network based algorithms in our simulation and empirical studies.

Topics & Concepts

Reinforcement learningPortfolioVariance (accounting)Computer scienceStochastic controlSelection (genetic algorithm)GaussianMathematical optimizationArtificial neural networkEntropy (arrow of time)Portfolio optimizationArtificial intelligenceOptimal controlMathematicsEconomicsFinancePhysicsAccountingQuantum mechanicsReinforcement Learning in RoboticsAdvanced Bandit Algorithms ResearchRisk and Portfolio Optimization