A Sample Efficient Multi-Agent Approach to Continuous Reinforcement Learning

Diarmuid Corcoran, P. Kreuger, Magnus Boman
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Abstract

As design, deployment and operation complexity increase in mobile systems, adaptive self-learning techniques have become essential enablers in mitigation and control of the complexity problem. Artificial intelligence and, in particular, reinforcement learning has shown great potential in learning complex tasks through observations. The majority of ongoing reinforcement learning research activities focus on single-agent problem settings with an assumption of accessibility to a globally observable state and action space. In many real-world settings, such as LTE or 5G, decision making is distributed and there is often only local accessibility to the state space. In such settings, multi-agent learning may be preferable, with the added challenge of ensuring that all agents collaboratively work towards achieving a common goal. We present a novel cooperative and distributed actor-critic multi-agent reinforcement learning algorithm. We claim the approach is sample efficient, both in terms of selecting observation samples and in terms of assignment of credit between subsets of collaborating agents.
持续强化学习的样本高效多智能体方法
随着移动系统的设计、部署和操作复杂性的增加,自适应自学习技术已成为缓解和控制复杂性问题的重要手段。人工智能,特别是强化学习在通过观察学习复杂任务方面显示出巨大的潜力。大多数正在进行的强化学习研究活动都集中在单智能体问题设置上,并假设对全局可观察状态和动作空间的可访问性。在许多现实环境中,例如LTE或5G,决策制定是分布式的,并且通常只有对状态空间的本地可访问性。在这种情况下,多智能体学习可能更可取,但要确保所有智能体协同工作以实现共同目标,这是一个额外的挑战。提出了一种新型的协作式分布式多智能体强化学习算法。我们声称该方法是样本有效的,无论是在选择观察样本方面,还是在合作代理子集之间的信用分配方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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