首页 /研究 /AutoEG: Automated Experience Grafting for Off-Policy Deep Reinforcement Learning
LEARNING

AutoEG: Automated Experience Grafting for Off-Policy Deep Reinforcement Learning

Keting Lu, Shiqi Zhang, Xiaoping Chen

发表年份
2020
访问权限
开放获取

摘要

Deep reinforcement learning (RL) algorithms frequently require prohibitive interaction experience to ensure the quality of learned policies. The limitation is partly because the agent cannot learn much from the many low-quality trials in early learning phase, which results in low learning rate. Focusing on addressing this limitation, this paper makes a twofold contribution. First, we develop an algorithm, called Experience Grafting (EG), to enable RL agents to reorganize segments of the few high-quality trajectories from the experience pool to generate many synthetic trajectories while retaining the quality. Second, building on EG, we further develop an AutoEG agent that automatically learns to adjust the grafting-based learning strategy. Results collected from a set of six robotic control environments show that, in comparison to a standard deep RL algorithm (DDPG), AutoEG increases the speed of learning process by at least 30%.

关键词

cs.LGcs.AI

相关论文

查看 LEARNING 分类全部论文