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Phasic Policy Gradient

2020-09-09Code Available1· sign in to hype

Karl Cobbe, Jacob Hilton, Oleg Klimov, John Schulman

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Abstract

We introduce Phasic Policy Gradient (PPG), a reinforcement learning framework which modifies traditional on-policy actor-critic methods by separating policy and value function training into distinct phases. In prior methods, one must choose between using a shared network or separate networks to represent the policy and value function. Using separate networks avoids interference between objectives, while using a shared network allows useful features to be shared. PPG is able to achieve the best of both worlds by splitting optimization into two phases, one that advances training and one that distills features. PPG also enables the value function to be more aggressively optimized with a higher level of sample reuse. Compared to PPO, we find that PPG significantly improves sample efficiency on the challenging Procgen Benchmark.

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
ProcGenPPGMean Normalized Performance0.76Unverified
ProcGenPPOMean Normalized Performance0.58Unverified

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