Capturing Dynamics of Information Diffusion in SNS: A Survey of Methodology and Techniques

Huacheng Li, Chunhe Xia, Tianbo Wang, S. Wen, Chao Chen, Yang Xiang
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引用次数: 7

Abstract

Studying information diffusion in SNS (Social Networks Service) has remarkable significance in both academia and industry. Theoretically, it boosts the development of other subjects such as statistics, sociology, and data mining. Practically, diffusion modeling provides fundamental support for many downstream applications (e.g., public opinion monitoring, rumor source identification, and viral marketing). Tremendous efforts have been devoted to this area to understand and quantify information diffusion dynamics. This survey investigates and summarizes the emerging distinguished works in diffusion modeling. We first put forward a unified information diffusion concept in terms of three components: information, user decision, and social vectors, followed by a detailed introduction of the methodologies for diffusion modeling. And then, a new taxonomy adopting hybrid philosophy (i.e., granularity and techniques) is proposed, and we made a series of comparative studies on elementary diffusion models under our taxonomy from the aspects of assumptions, methods, and pros and cons. We further summarized representative diffusion modeling in special scenarios and significant downstream tasks based on these elementary models. Finally, open issues in this field following the methodology of diffusion modeling are discussed.
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捕捉SNS中信息扩散的动态:方法论和技术综述
研究社交网络服务中的信息扩散问题在学术界和工业界都具有重要意义。从理论上讲,它促进了其他学科的发展,如统计学、社会学和数据挖掘。实际上,扩散建模为许多下游应用提供了基础支持(例如,舆情监测、谣言来源识别和病毒式营销)。为了理解和量化信息扩散动力学,人们在这一领域做出了巨大的努力。本文调查和总结了扩散建模中新兴的杰出作品。我们首先从信息、用户决策和社会向量三个方面提出了统一的信息扩散概念,然后详细介绍了扩散建模的方法。在此基础上,提出了一种采用混合哲学(即粒度和技术)的新分类法,并从假设、方法、利弊等方面对该分类法下的基本扩散模型进行了一系列比较研究,进一步总结了基于这些基本模型的特殊场景和重要下游任务的代表性扩散建模。最后,根据扩散建模的方法,讨论了该领域有待解决的问题。
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