Evaluate dynamic network with evolutionary game method

Qun Liu, Jia Yi
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Abstract

The application of evolutionary games on complex networks has made a great difference. In this paper, an optimized evolutionary game method based on public goods games (PGG) is put forward to describe and evaluate time-varying mixed membership networks. Considering the heterogeneous topology, a new preferential rule is proposed to quantify the process of choosing and updating the payoff of individuals in the public goods games. Each individual is allocated with a weight to restrict the influence. The optimal parameter is obtained by minimizing the entropy of nodes topological potential, an efficient way to depict the effect among individuals, which is inspired by Gaussian potential of data field. It demonstrates that an appropriate constraint on individuals does make it more like to approach to the reality, and when it comes to specific conditions, the proposed model achieves well performance.
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用进化博弈法评价动态网络
进化博弈在复杂网络中的应用产生了巨大的影响。本文提出了一种基于公共物品博弈的优化进化博弈方法来描述和评价时变混合成员网络。考虑到异构拓扑结构,提出了一种新的偏好规则来量化公共物品博弈中个体收益的选择和更新过程。每个人都被分配了一个权重来限制影响。受数据场高斯势的启发,通过最小化节点拓扑势的熵来获得最优参数,这是一种描述个体间影响的有效方法。结果表明,适当的个体约束确实使模型更接近于现实,并且在特定条件下,所提出的模型具有良好的性能。
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