基于程度的种子优化,使信息在社交网络中传播最大化

Kundan Kandhway, J. Kuri
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引用次数: 0

摘要

我们研究了最优种子选择问题,以最大化社会网络中接收到信息的个体的比例。我们使用易感-感染(SI)过程来模拟信息流行。为了实现上述目标,我们提出了一个在固定预算约束下可用资源的优化问题,在网络中招募个体作为种子。种子是根据节点度决定的。这种方法即使在网络的确切邻接矩阵未知且仅估计网络中个体的度时也能工作。我们研究了网络的度分布对最优种子选择策略的影响,并给出了合成无标度网络和Erdös-Rényi网络以及一个真实的科学协作社会网络的结果。将最优策略与(i)在所有度中统一选择种子和(ii)选择最高度节点作为种子的两种启发式策略进行比较。我们的研究结果表明,对于大范围的模型参数,仅针对最高度节点并不是各种网络的最优选择。这项工作可能会引起广告商和活动人士的兴趣,他们对通过社交网络在人群中传播信息感兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Degree based seed optimization to maximize information dissemination in social networks
We study the problem of optimal seed selection to maximize the fraction of individuals which has received a message in a social network. We have used the Susceptible-Infected (SI) process to model information epidemics. We formulate an optimization problem under a fixed budget constraint on the resource available to recruit individuals in the network to act as seeds, to achieve the above objective. The seeds are decided based on node degrees. This approach will work even when the exact adjacency matrix of the network is unknown and only degrees of the individuals in the network have been estimated. We study effect of the degree distribution of the network on the optimal seed selection strategy and present results for synthetic scale free and Erdös-Rényi networks, and a real scientific collaboration social network. The optimal strategy is compared with two heuristic strategies that (i) selects seeds uniformly among all degrees and (ii) selects highest degree nodes as seeds. Our results show that for a wide range of model parameters, targeting only the highest degree nodes is not optimal for various networks. This work may be of interest to advertisers and campaigners who are interested in spreading a message in a population connected via social networks.
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