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First Order Optimization in Policy Space for Constrained Deep Reinforcement Learning.

Yiming Zhang, Quan Vuong, Keith W. Ross

Year
2020
Citations
6

Abstract

In reinforcement learning, an agent attempts to learn high-performing behaviors through interacting with the environment, such behaviors are often quantified in the form of a reward function. However some aspects of behavior, such as ones which are deemed unsafe and are to be avoided, are best captured through constraints. We propose a novel approach called First Order Constrained Optimization in Policy Space (FOCOPS) which maximizes an agent's overall reward while ensuring the agent satisfies a set of cost constraints. Using data generated from the current policy, FOCOPS first finds the optimal update policy by solving a constrained optimization problem in the nonparameterized policy space. FOCOPS then projects the update policy back into the parametric policy space. Our approach provides a guarantee for constraint satisfaction throughout training and is first-order in nature therefore extremely simple to implement. We provide empirical evidence that our algorithm achieves better performance on a set of constrained robotics locomotive tasks compared to current state of the art approaches.

Keywords

Reinforcement learningComputer scienceSet (abstract data type)Constraint (computer-aided design)Space (punctuation)Mathematical optimizationState spaceArtificial intelligenceConstraint satisfactionFunction (biology)

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