在多种群文化算法中通过智能体迁移改进人工制品选择

Felicitas Mokom, Ziad Kobti
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引用次数: 5

摘要

多种群文化算法是涉及多个独立进化的亚种群的文化进化框架。工件选择涉及代理自主推理选择工件以实现其目标的能力。本研究探讨了多种群文化算法中智能体在种群之间的迁移,作为增加社会智能体人工制品选择知识的一种方法。嵌入在社会模拟模型中的多种群文化算法由两个子种群组成,其中一个子种群中的代理由于存在有关某些人工制品的知识而始终优于另一个子种群中的代理。社会网络将一个子群体中的代理连接起来,代理的知识可以被网络成员或其子群体中表现最好的成员改变。该模型利用新的工件知识研究智能体从先进的子种群向落后的子种群的迁移。儿童安全约束选择提供了一个实施的案例研究。结果表明,当启用社交网络时,迁移带来的好处更有可能提高代理的性能。研究表明,文化进化的代理人可以在缺乏标准干预的情况下提高人工制品选择知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving artifact selection via agent migration in multi-population cultural algorithms
Multi-population cultural algorithms are cultural evolutionary frameworks involving multiple independently evolving subpopulations. Artifact selection involves the ability of agents to autonomously reason about selecting artifacts towards achieving their goals. In this study, agent migration between populations in a multi-population cultural algorithm is explored as an approach for augmenting artifact selection knowledge in social agents. Embedded in a social simulation model the multipopulation cultural algorithm consists of two subpopulations where agents in one subpopulation consistently outperform agents in the other due to the presence of knowledge about certain artifacts. Social networks connect agents within a subpopulation and agent knowledge can be altered by members of their network or the best performers of their subpopulation. The model investigates agent migration with novel artifact knowledge from the advanced subpopulation to the underperforming one. Child safety restraint selection is provided as an implemented case study. Results demonstrate the benefits of migration with a higher likelihood of an increase in agent performance when the social network is enabled. The study shows that culturally evolving agents can improve artifact selection knowledge in the absence of standard interventions as a result of migration.
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