强化学习技术概述

Damjan Pecioski, V. Gavriloski, Simona Domazetovska, Anastasija Ignjatovska
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引用次数: 0

摘要

为一个事先不知道最优解的系统编写控制代码可能是一个非常耗时的过程。人工智能(AI)方法通常涉及设计一套规则,这些规则可以在问题精确定义和很好理解的情况下有效。由于在现实世界的问题中很少知道最优解,因此可以使用包含试错尝试的强化学习框架。强化学习(RL)是一种机器学习技术,它涉及训练智能体根据从环境中接收到的反馈做出决策。设计RL系统时要做的一个重要决定是使用单个还是多个代理。这个决定取决于需要解决的问题的类型以及环境的复杂性。如果目标可以通过单个代理(一个玩家)实现,则建议使用单代理强化学习,而如果需要在多个代理(玩家)之间进行协调,则建议使用多代理方法。在本文中,介绍了单代理强化学习和多代理强化学习技术之间的差异,以及它们的优点和缺点,并提供了一种方法何时比另一种方法更合适的见解。
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An overview of reinforcement learning techniques
Writing control code for a system where the optimal solution is not known in advance can be a very time-consuming process. The Artificial Intelligence (AI) methods typically involve designing a set of rules which can be effective in situations where the problem is precisely defined and well understood. As in real world problems the optimal solution is rarely known, the reinforcement learning framework which incorporates trial and error attempts can be used. Reinforcement learning (RL) is a machine learning technique that involves training an agent to make decisions which are based on the feedback it receives from the environment. One important decision to make when designing an RL system is whether to use a single or multiple agents. This decision depends on the type of problem that needs to be solved as well the environment complexity. Having a goal that can be achieved by a single agent (one player) it is recommended to use single-agent RL while if there is a need for coordination between multiple agents (players) then a multi-agent approach is recommended. In this article, the differences between single agent RL and multi agent RL techniques, as well as their advantages and disadvantages have been presented, and insights are provided into when one approach may be more appropriate than the other.
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