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Extracting influential nodes on a social network for information diffusion

机译:提取社交网络上有影响力的节点以进行信息传播

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摘要

We address the combinatorial optimization problem of finding the most influential nodes on a large-scale social network for two widely-used fundamental stochastic diffusion models. The past study showed that a greedy strategy can give a good approximate solution to the problem. However, a conventional greedy method faces a computational problem. We propose a method of efficiently finding a good approximate solution to the problem under the greedy algorithm on the basis of bond percolation and graph theory, and compare the proposed method with the conventional method in terms of computational complexity in order to theoretically evaluate its effectiveness. The results show that the proposed method is expected to achieve a great reduction in computational cost.We further experimentally demonstrate that the proposed method is much more efficient than the conventional method using largescale real-world networks including blog networks.
机译:我们解决了组合优化问题,即为两个广泛使用的基本随机扩散模型在大型社交网络上找到最有影响力的节点。过去的研究表明,贪婪策略可以很好地解决该问题。但是,传统的贪婪方法面临计算问题。在键渗流和图论的基础上,我们提出了一种在贪婪算法下有效地找到一个好的近似解决方案的方法,并在计算复杂度方面与传统方法进行了比较,以从理论上评估其有效性。结果表明,该方法有望大大降低计算成本。我们进一步通过实验证明,该方法比使用包括博客网络在内的大规模现实世界网络的常规方法效率更高。

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