Efficient and Robust Emergence of Norms through Heuristic Collective Learning

Jianye Hao, Jun Sun, Guangyong Chen, Zan Wang, Chao Yu, Zhong Ming
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引用次数: 15

Abstract

In multiagent systems, social norms serves as an important technique in regulating agents’ behaviors to ensure effective coordination among agents without a centralized controlling mechanism. In such a distributed environment, it is important to investigate how a desirable social norm can be synthesized in a bottom-up manner among agents through repeated local interactions and learning techniques. In this article, we propose two novel learning strategies under the collective learning framework, collective learning EV-l and collective learning EV-g, to efficiently facilitate the emergence of social norms. Extensive simulations results show that both learning strategies can support the emergence of desirable social norms more efficiently and be applicable in a wider range of multiagent interaction scenarios compared with previous work. The influence of different topologies is investigated, which shows that the performance of all strategies is robust across different network topologies. The influences of a number of key factors (neighborhood size, actions space, population size, fixed agents and isolated subpopulations) on norm emergence performance are investigated as well.
启发式集体学习中规范的有效和稳健出现
在多智能体系统中,社会规范作为调节智能体行为的重要手段,在没有集中控制机制的情况下保证了智能体之间的有效协调。在这样的分布式环境中,重要的是研究如何通过重复的局部交互和学习技术,在代理之间以自下而上的方式合成理想的社会规范。本文提出了集体学习框架下的两种新型学习策略,即集体学习ev - 1和集体学习EV-g,以有效促进社会规范的产生。大量的模拟结果表明,与以前的研究相比,这两种学习策略都可以更有效地支持理想社会规范的出现,并且适用于更广泛的多智能体交互场景。研究了不同拓扑的影响,结果表明,在不同的网络拓扑中,所有策略的性能都是鲁棒的。研究了社区规模、行动空间、群体规模、固定主体和孤立亚群体等关键因素对规范涌现性能的影响。
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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