方向舵
强化学习
马尔可夫决策过程
计算机科学
时差学习
任务(项目管理)
方差减少
蒙特卡罗方法
蒙特卡罗树搜索
数学优化
差异(会计)
人工智能
马尔可夫过程
数学
统计
工程类
经济
会计
系统工程
海洋工程
作者
Jose A. Arjona-Medina,Michael Gillhofer,Michael Widrich,Thomas Unterthiner,J. Brandstetter,Sepp Hochreiter
出处
期刊:Cornell University - arXiv
日期:2019-01-01
卷期号:32: 13544-13555
被引量:56
摘要
We propose RUDDER, a novel reinforcement learning approach for delayed rewards in finite Markov decision processes (MDPs). In MDPs the Q-values are equal to the expected immediate reward plus the expected future rewards. The latter are related to bias problems in temporal difference (TD) learning and to high variance problems in Monte Carlo (MC) learning. Both problems are even more severe when rewards are delayed. RUDDER aims at making the expected future rewards zero, which simplifies Q-value estimation to computing the mean of the immediate reward. We propose the following two new concepts to push the expected future rewards toward zero. (i) Reward redistribution that leads to return-equivalent decision processes with the same optimal policies and, when optimal, zero expected future rewards. (ii) Return decomposition via contribution analysis which transforms the reinforcement learning task into a regression task at which deep learning excels. On artificial tasks with delayed rewards, RUDDER is significantly faster than MC and exponentially faster than Monte Carlo Tree Search (MCTS), TD(λ), and reward shaping approaches. At Atari games, RUDDER on top of a Proximal Policy Optimization (PPO) baseline improves the scores, which is most prominent at games with delayed rewards.
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