人在环强化学习的价值驱动表示

Ramtin Keramati, E. Brunskill
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引用次数: 3

摘要

由强化学习(RL)驱动的交互式自适应系统有许多潜在的应用,例如智能辅导系统。在这样的系统中,通常会有一个外部的人类系统设计师来创建、监控和修改交互式自适应系统,试图改善其在目标结果上的表现。本文重点研究了如何帮助系统设计者选择传感器或特征集来定义强化学习智能体用于决策的观察空间的算法基础。我们提出了一种算法,价值驱动表示(VDR),它可以迭代和自适应地增加强化学习代理的观察空间,以便足以捕获(接近)最优策略。为此,我们引入了一种新的方法,使用离线模拟蒙特卡罗部署来乐观地估计策略的值。我们在模拟人类的标准RL基准上评估了我们的方法的性能,并证明了比以前的基线有显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Value Driven Representation for Human-in-the-Loop Reinforcement Learning
Interactive adaptive systems powered by Reinforcement Learning (RL) have many potential applications, such as intelligent tutoring systems. In such systems there is typically an external human system designer that is creating, monitoring and modifying the interactive adaptive system, trying to improve its performance on the target outcomes. In this paper we focus on algorithmic foundation of how to help the system designer choose the set of sensors or features to define the observation space used by reinforcement learning agent to make decisions. We present an algorithm, value driven representation (VDR), that can iteratively and adaptively augment the observation space of a reinforcement learning agent so that is sufficient to capture a (near) optimal policy. To do so we introduce a new method to optimistically estimate the value of a policy using offline simulated Monte Carlo rollouts. We evaluate the performance of our approach on standard RL benchmarks with simulated humans and demonstrate significant improvement over prior baselines.
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