Litcius/Paper detail

Implementation Matters in Deep RL: A Case Study on PPO and TRPO

Logan Engstrom, Andrew Ilyas, Shibani Santurkar, Dimitris Tsipras, Firdaus Janoos, Larry Rudolph, Aleksander Mądry

2020International Conference on Learning Representations119 citations

Abstract

We study the roots of algorithmic progress in deep policy gradient algorithms through a case study on two popular algorithms, Proximal Policy Optimization and Trust Region Policy Optimization. We investigate the consequences of code-level optimizations: algorithm augmentations found only in implementations or described as auxiliary details to the core algorithm. Seemingly of secondary importance, such optimizations have a major impact on agent behavior. Our results show that they (a) are responsible for most of PPO's gain in cumulative reward over TRPO, and (b) fundamentally change how RL methods function. These insights show the difficulty, and importance, of attributing performance gains in deep reinforcement learning.

Topics & Concepts

Reinforcement learningComputer scienceImplementationCode (set theory)Function (biology)Core (optical fiber)Artificial intelligenceMathematical optimizationTrust regionMachine learningAlgorithmProgramming languageMathematicsComputer securityTelecommunicationsEvolutionary biologyBiologyRADIUSSet (abstract data type)Reinforcement Learning in RoboticsAdversarial Robustness in Machine LearningAdvanced Memory and Neural Computing