Influence in social networks: A unified model?

Ajitesh Srivastava, C. Chelmis, V. Prasanna
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引用次数: 17

Abstract

Understanding how information flows in online social networks is of great importance. It is generally difficult to obtain accurate prediction results of cascades over such networks, therefore a variety of diffusion models have been proposed in the literature to simulate diffusion processes instead. We argue that such models require extensive simulation results to produce good estimates of future spreads. In this work, we take a complimentary approach. We present a generalized, analytical model of influence in social networks that captures social influence at various levels of granularity, ranging from pairwise influence, to local neighborhood, to the general population, and external events, therefore capturing the complex dynamics of human behavior. We demonstrate that our model can integrate a variety of diffusion models. Particularly, we show that commonly used diffusion models in social networks can be reduced to special cases of our model, by carefully defining their parameters. Our goal is to provide a closed-form expression to approximate the probability of infection for every node in an arbitrary, directed network at any time t. We quantitatively evaluate the approximation quality of our analytical solution as compared to numerous popular diffusion models on a real-world dataset and a series of synthetic graphs.
社交网络的影响力:一个统一的模型?
了解在线社交网络中的信息流动是非常重要的。在这样的网络中,通常很难获得准确的级联预测结果,因此文献中提出了各种扩散模型来模拟扩散过程。我们认为这样的模型需要广泛的模拟结果来产生对未来价差的良好估计。在这项工作中,我们采取了一种互补的方法。我们提出了一个社会网络中影响力的广义分析模型,该模型捕获了不同粒度级别的社会影响,范围从两两影响到当地社区,到一般人群和外部事件,因此捕获了人类行为的复杂动态。我们证明了我们的模型可以整合各种扩散模型。特别是,我们表明,通过仔细定义其参数,社交网络中常用的扩散模型可以简化为我们模型的特殊情况。我们的目标是提供一个封闭形式的表达式来近似任意时间t的有向网络中每个节点的感染概率。我们定量地评估了我们的解析解的近似质量,与现实世界数据集和一系列合成图上的许多流行扩散模型相比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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