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Fast reinforcement learning with generalized policy updates

André Barreto, Shaobo Hou, Diana Borsa, David Silver, Doina Precup

2020Proceedings of the National Academy of Sciences82 citationsDOIOpen Access PDF

Abstract

The combination of reinforcement learning with deep learning is a promising approach to tackle important sequential decision-making problems that are currently intractable. One obstacle to overcome is the amount of data needed by learning systems of this type. In this article, we propose to address this issue through a divide-and-conquer approach. We argue that complex decision problems can be naturally decomposed into multiple tasks that unfold in sequence or in parallel. By associating each task with a reward function, this problem decomposition can be seamlessly accommodated within the standard reinforcement-learning formalism. The specific way we do so is through a generalization of two fundamental operations in reinforcement learning: policy improvement and policy evaluation. The generalized version of these operations allow one to leverage the solution of some tasks to speed up the solution of others. If the reward function of a task can be well approximated as a linear combination of the reward functions of tasks previously solved, we can reduce a reinforcement-learning problem to a simpler linear regression. When this is not the case, the agent can still exploit the task solutions by using them to interact with and learn about the environment. Both strategies considerably reduce the amount of data needed to solve a reinforcement-learning problem.

Topics & Concepts

Reinforcement learningComputer scienceLeverage (statistics)Artificial intelligenceMachine learningGeneralizationExploitMathematicsComputer securityMathematical analysisReinforcement Learning in RoboticsSupply Chain and Inventory ManagementSoftware Engineering Research
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