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Efficient Search of Winning Strategies in Multi-agent Systems on Random Network: Importance of Local Solidarity

机译:在随机网络上有效地搜索多种子体系统中的赢取策略:局部团结的重要性

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Multi-agent systems defined on a network can be used for modelling the competition between companies in terms of market dominance. In view of the enormous size of the search space for winning strategies of initial configuration of resource allocation on network, we focus our search on the subspace defined by special local clustering effects, using the recently developed evolutionary computational algorithm. Strategies that emphasize local solidarity, measured by the formation of clusters in the form of triangles linkage between members of the same company, prove to be effective in winning both the market share with high probability and high speed. The result provides a good guideline to improve the collective competitiveness in a network of agents. The formulation is based on the Ising model in statistical physics and the evolutionary game is based on Monte Carlo simulation. Significance and the application of the algorithm in the context of econophysics and damage spreading in network are discussed.
机译:在网络上定义的多种代理系统可用于在市场优势方面建模公司之间的竞争。鉴于搜索空间的巨大规模,用于赢得网络上资源分配的初始配置的策略,我们使用最近开发的进化计算算法将我们的搜索集中在特殊的本地聚类效果所定义的子空间上。强调局部团结的策略,通过形成同一公司成员之间的三角形联动形式的集群来衡量,证明有效地赢得市场份额高概率和高速。结果提供了提高代理网络中集体竞争力的良好指导。该制剂基于统计物理学中的课程模型,进化比赛基于蒙特卡罗模拟。探讨了算法在杂物物理学背景下算法的意义和应用。

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