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Analysis and Control of Beliefs in Social Networks

机译:社交网络信念的分析与控制

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摘要

In this paper, we investigate the problem of how beliefs diffuse among members of social networks. We propose an information flow model (IFM) of belief that captures how interactions among members affect the diffusion and eventual convergence of a belief. The IFM model includes a generalized Markov Graph (GMG) model as a social network model, which reveals that the diffusion of beliefs depends heavily on two characteristics of the social network characteristics, namely degree centralities and clustering coefficients. We apply the IFM to both converged belief estimation and belief control strategy optimization. The model is compared with an IFM including the Barabási–Albert model, and is evaluated via experiments with published real social network data.
机译:在本文中,我们研究了信仰如何在社交网络成员之间传播的问题。我们提出了一种信念的信息流模型(IFM),该模型捕获成员之间的交互如何影响信念的扩散和最终收敛。 IFM模型包括作为社会网络模型的广义马尔可夫图(GMG)模型,这表明信念的扩散在很大程度上取决于社会网络特征的两个特征,即程度中心性和聚类系数。我们将IFM应用于融合信念估计和信念控制策略优化。该模型与包括Barabási-Albert模型的IFM进行了比较,并通过对发布的真实社交网络数据进行的实验进行了评估。

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