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Cyclic Entropy Optimization of Social Networks Using an Evolutionary Algorithm

机译:使用进化算法的社交网络循环熵优化

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We design and apply a Genetic Algorithm that maximizes the cyclic-entropy of a social network model, hence optimizing its robustness to failures. Our algorithm was applied on three types of social networks: scale-free, small-world and random networks. The three types of networks were generated using Barabasi and Albert’s generative model, Watts and Strogatz’s model and Erdos-Renyi’s model, respectively. The maximum optimal entropy achieved among all three types was the one displayed by the small-world network, which was equal to 2.6887, corresponding to an optimal network distribution found when the initial distribution was subject to 11 random edge removals and 19 additions of random edges regardless of the initial distribution. The random-network model came next with optimal entropy equal to 2.5692, followed by the scale-free network which had optimal entropy of 2.5190. We observed by keeping track of the topology of the network and the cycles’ length distribution within it, that all different types of networks evolve almost to the same network, possibly a random network, after being subject to the cyclic-entropy optimization algorithm.
机译:我们设计并应用遗传算法最大化社交网络模型的循环熵,从而优化其稳健性故障。我们的算法应用三种类型的社交网络:无标度,小世界和随机网络。使用Barabasi艾伯特的生成模型,Watts和斯托加茨的模型和鄂尔多斯 - 仁义的模型生成三种类型的网络,分别。所有这三种类型中达到的最大最佳熵是一个显示在由小世界网络,这是等于2.6887,对应于最佳的网络分布时发现的初始分布有待11随机边缘移除和随机边缘19个增加不管初始分布。随机网络模型来与旁边的最佳熵等于2.5692,其次是无标度网络,具有2.5190最佳熵。我们观察到通过跟踪网络及其中的周期长度分布的拓扑的,即所有不同类型的网络的演进几乎到同一网络,可能是随机网络,经受循环熵优化算法之后。

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