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Influence Maximization in Network by Genetic Algorithm on Linear Threshold Model

机译:基于线性阈值模型的遗传算法影响网络中的最大化

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The problem of maximum influence on the network consists in the search for a subset of k vertices called seeds which when activated are able to influence as much elements as possible, considering a model to simulate the propagation of influence in a network. This paper proposes a Genetic Algorithm to optimize the selection of seeds for the Linear Threshold Model (LTM), a widely adopted simulation model for influence propagation, by investigating different strategies for initial population configurations based on high centrality nodes. The results obtained by the application of the proposed methodology to the Linear Threshold Model considering real world networks show significant improvements on the convergence of the algorithm.
机译:对网络的最大影响的问题包括搜索名为种子的k顶点的子集,当激活时,当激活时能够影响尽可能多的元素,考虑到模型来模拟网络中的影响传播。本文提出了一种遗传算法,以优化线性阈值模型(LTM)的种子选择,通过研究基于高中心点的初始群体配置的不同策略,广泛采用的影响传播的仿真模型。考虑真实世界网络的线性阈值模型应用所提出的方法获得的结果显着改善了算法的收敛性。

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