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Dynamic Social Influence Analysis through Time-Dependent Factor Graphs

机译:通过时间依赖性因子图进行动态社会影响分析

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摘要

Social influence, the phenomenon that the actions of a user can induce her/his friends to behave in a similar way, plays a key role in many (online) social systems. For example, a company wants to market a new product through the effect of ``word of mouth'' in the social network. It wishes to find and convince a small number of influential users to adopt the product, and the goal is to trigger a large cascade of further adoptions. Fundamentally, we need to answer the following question: how to quantify the influence between two users in a large social network? To address this question, we propose a pair wise factor graph (PFG) model to model the social influence in social networks. An efficient algorithm is designed to learn the model and make inference. We further propose a dynamic factor graph (DFG) model to incorporate the time information. Experimental results on three different genres of data sets show that the proposed approaches can efficiently infer the dynamic social influence. The results are applied to the influence maximization problem, which aims to find a small subset of nodes (users) in a social network that could maximize the spread of influence. Experiments show that the proposed approach can facilitate the application.
机译:社会影响力,用户的行动可以诱导她/他的朋友以类似的方式行事的现象,在许多(在线)社会系统中发挥着关键作用。例如,一家公司希望通过社交网络中的“嘴巴”的影响来推销新产品。它希望找到并说服少数有影响力的用户采用产品,目标是触发大型级联的进一步采用。从根本上,我们需要回答以下问题:如何在大型社交网络中量化两个用户之间的影响?为了解决这个问题,我们提出了一对明智因子图(PFG)模型来模拟社交网络中的社会影响力。有效的算法旨在学习模型并进行推断。我们进一步提出了一种动态因子图(DFG)模型来包含时间信息。三种不同类型的数据集实验结果表明,提出的方法可以有效地推断出动态的社会影响力。结果应用于影响最大化问题,该问题旨在在社交网络中找到一个可以最大化影响的扩散的社交网络中的小节点(用户)子集。实验表明,该方法可以促进申请。

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