强化学习
人工智能
机器人学
功能(生物学)
计算机科学
集合(抽象数据类型)
机器人
领域(数学分析)
钢筋
机器人学习
机器学习
人机交互
工程类
移动机器人
数学
生物
数学分析
进化生物学
结构工程
程序设计语言
作者
Jens Kober,J. Andrew Bagnell,Jan Peters
标识
DOI:10.1177/0278364913495721
摘要
Reinforcement learning offers to robotics a framework and set of tools for the design of sophisticated and hard-to-engineer behaviors. Conversely, the challenges of robotic problems provide both inspiration, impact, and validation for developments in reinforcement learning. The relationship between disciplines has sufficient promise to be likened to that between physics and mathematics. In this article, we attempt to strengthen the links between the two research communities by providing a survey of work in reinforcement learning for behavior generation in robots. We highlight both key challenges in robot reinforcement learning as well as notable successes. We discuss how contributions tamed the complexity of the domain and study the role of algorithms, representations, and prior knowledge in achieving these successes. As a result, a particular focus of our paper lies on the choice between model-based and model-free as well as between value-function-based and policy-search methods. By analyzing a simple problem in some detail we demonstrate how reinforcement learning approaches may be profitably applied, and we note throughout open questions and the tremendous potential for future research.
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