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Optimal Strategy for Resource Allocation of Two-Dimensional Potts Model Using Genetic Algorithm

机译:基于遗传算法的二维Potts模型资源分配的最优策略

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The problem of optimal strategies of resource allocation for companies competing in the shopping malls in a metropolis is investigated in the context of two-dimensional three state Potts model in statistical physics. The aim of each company is to find the best strategy of initial distribution of resource to achieve market dominance in the shortest time. Evolutionary Algorithm is used to encode the ensemble of initial patterns of three states Potts model and the fitness of the configuration is measured by the market share of a chosen company after a fixed number of Monte Carlo steps of evolution. Numerical simulation indicates that initial patterns with certain topological properties do evolve faster to market dominance. The description of these topological properties is measured by the degree distribution of each company. Insight on the initial patterns that entail fast dominance is discussed.
机译:在统计物理学中的二维三州Potts模型的背景下,在二维三态Potts模型中调查了在大都市购物中心竞争的公司资源分配最佳策略问题。每家公司的目的是在最短的时间内找到资源初始分配的最佳策略,以实现市场优势。进化算法用于编码三种状态匹配模型的初始模式的集合,并且在固定数量的蒙特卡洛进化步骤后,通过所选公司的市场份额来衡量配置的适应性。数值模拟表明,具有某些拓扑特性的初始模式确实更快地发展到市场优势。通过每个公司的程度分布来测量这些拓扑性质的描述。讨论了需要快速统治的初始模式的洞察。

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