基于信息融合的信念理论Twitter影响力研究方法

Q1 Mathematics
Computational Social Networks Pub Date : 2016-01-01 Epub Date: 2016-09-22 DOI:10.1186/s40649-016-0030-2
Lobna Azaza, Sergey Kirgizov, Marinette Savonnet, Éric Leclercq, Nicolas Gastineau, Rim Faiz
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引用次数: 4

摘要

由于Twitter这种微博服务被广泛用于分享和传播信息,因此Twitter的影响力已成为最近的一个热门研究课题。有些用户比其他人更有能力影响和说服同伴。因此,研究最具影响力的用户可以达到大规模的信息扩散区域,这在营销或政治运动中非常有用。在本研究中,我们提出了一种新的多关系网络(如Twitter)的多层次影响评估方法。我们定义了一个社交图,将用户之间的关系建模为一个多路图,其中用户由节点表示,链接建模他们之间的不同关系(例如,转发、提及和回复)。我们探讨了该图中节点之间的关系如何揭示影响程度,并提出了一个通用的计算模型来评估某个节点的影响程度。这是基于信念函数理论中的合取组合规则来组合不同类型的关系。我们对2014年欧洲选举期间从Twitter收集的大量数据进行了实验,并推断出最有影响力的候选人。结果表明,我们的模型具有足够的灵活性,可以根据社会科学家的需要或要求考虑多种交互组合,并且信念理论的数值结果是准确的。我们还在CLEF RepLab 2014数据集上评估了该方法,并表明我们的方法导致了相当有趣的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Information fusion-based approach for studying influence on Twitter using belief theory.

Information fusion-based approach for studying influence on Twitter using belief theory.

Information fusion-based approach for studying influence on Twitter using belief theory.

Information fusion-based approach for studying influence on Twitter using belief theory.

Influence in Twitter has become recently a hot research topic, since this micro-blogging service is widely used to share and disseminate information. Some users are more able than others to influence and persuade peers. Thus, studying most influential users leads to reach a large-scale information diffusion area, something very useful in marketing or political campaigns. In this study, we propose a new approach for multi-level influence assessment on multi-relational networks, such as Twitter. We define a social graph to model the relationships between users as a multiplex graph where users are represented by nodes, and links model the different relations between them (e.g., retweets, mentions, and replies). We explore how relations between nodes in this graph could reveal about the influence degree and propose a generic computational model to assess influence degree of a certain node. This is based on the conjunctive combination rule from the belief functions theory to combine different types of relations. We experiment the proposed method on a large amount of data gathered from Twitter during the European Elections 2014 and deduce top influential candidates. The results show that our model is flexible enough to to consider multiple interactions combination according to social scientists needs or requirements and that the numerical results of the belief theory are accurate. We also evaluate the approach over the CLEF RepLab 2014 data set and show that our approach leads to quite interesting results.

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来源期刊
Computational Social Networks
Computational Social Networks Mathematics-Modeling and Simulation
自引率
0.00%
发文量
0
审稿时长
13 weeks
期刊介绍: Computational Social Networks showcases refereed papers dealing with all mathematical, computational and applied aspects of social computing. The objective of this journal is to advance and promote the theoretical foundation, mathematical aspects, and applications of social computing. Submissions are welcome which focus on common principles, algorithms and tools that govern network structures/topologies, network functionalities, security and privacy, network behaviors, information diffusions and influence, social recommendation systems which are applicable to all types of social networks and social media. Topics include (but are not limited to) the following: -Social network design and architecture -Mathematical modeling and analysis -Real-world complex networks -Information retrieval in social contexts, political analysts -Network structure analysis -Network dynamics optimization -Complex network robustness and vulnerability -Information diffusion models and analysis -Security and privacy -Searching in complex networks -Efficient algorithms -Network behaviors -Trust and reputation -Social Influence -Social Recommendation -Social media analysis -Big data analysis on online social networks This journal publishes rigorously refereed papers dealing with all mathematical, computational and applied aspects of social computing. The journal also includes reviews of appropriate books as special issues on hot topics.
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