LGAIMLMar 19, 2019

Truly Proximal Policy Optimization

arXiv:1903.07940v2195 citations
Originality Incremental advance
AI Analysis

This addresses performance instability in reinforcement learning for practitioners, but it is incremental as it enhances an existing method.

The paper tackled the issue that Proximal Policy Optimization (PPO) does not strictly enforce trust region constraints, risking performance instability, and introduced Truly PPO with a new clipping function and trust region-based triggering to improve sample efficiency and performance.

Proximal policy optimization (PPO) is one of the most successful deep reinforcement-learning methods, achieving state-of-the-art performance across a wide range of challenging tasks. However, its optimization behavior is still far from being fully understood. In this paper, we show that PPO could neither strictly restrict the likelihood ratio as it attempts to do nor enforce a well-defined trust region constraint, which means that it may still suffer from the risk of performance instability. To address this issue, we present an enhanced PPO method, named Truly PPO. Two critical improvements are made in our method: 1) it adopts a new clipping function to support a rollback behavior to restrict the difference between the new policy and the old one; 2) the triggering condition for clipping is replaced with a trust region-based one, such that optimizing the resulted surrogate objective function provides guaranteed monotonic improvement of the ultimate policy performance. It seems, by adhering more truly to making the algorithm proximal - confining the policy within the trust region, the new algorithm improves the original PPO on both sample efficiency and performance.

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