LGNEMLMay 21, 2018

Evolution-Guided Policy Gradient in Reinforcement Learning

arXiv:1805.07917v2290 citations
Originality Incremental advance
AI Analysis

This addresses the problem of improving sample efficiency and stability in reinforcement learning for researchers and practitioners, though it appears incremental as it builds on existing DRL and EA techniques.

The paper tackles the core difficulties of deep reinforcement learning (DRL), such as sparse rewards and exploration, by introducing Evolutionary Reinforcement Learning (ERL), a hybrid algorithm that combines evolutionary algorithms (EAs) with DRL, and demonstrates that ERL significantly outperforms prior DRL and EA methods in continuous control benchmarks.

Deep Reinforcement Learning (DRL) algorithms have been successfully applied to a range of challenging control tasks. However, these methods typically suffer from three core difficulties: temporal credit assignment with sparse rewards, lack of effective exploration, and brittle convergence properties that are extremely sensitive to hyperparameters. Collectively, these challenges severely limit the applicability of these approaches to real-world problems. Evolutionary Algorithms (EAs), a class of black box optimization techniques inspired by natural evolution, are well suited to address each of these three challenges. However, EAs typically suffer from high sample complexity and struggle to solve problems that require optimization of a large number of parameters. In this paper, we introduce Evolutionary Reinforcement Learning (ERL), a hybrid algorithm that leverages the population of an EA to provide diversified data to train an RL agent, and reinserts the RL agent into the EA population periodically to inject gradient information into the EA. ERL inherits EA's ability of temporal credit assignment with a fitness metric, effective exploration with a diverse set of policies, and stability of a population-based approach and complements it with off-policy DRL's ability to leverage gradients for higher sample efficiency and faster learning. Experiments in a range of challenging continuous control benchmarks demonstrate that ERL significantly outperforms prior DRL and EA methods.

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