A Topic Aware-based Approach to Maximize Social Influence

Daniel Santos, A. Perkusich, H. Almeida
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引用次数: 2

Abstract

The use of social networks has shown great potential for information diffusion and formation of public opinion. One key problem that has attracted researchers interest is Topic-based Influence Maximization, that refers to finding a small set of users on a social network that have the ability to influence a substantial portion of users on a given topic. The proposed solutions, however, are not suitable for large-scale social networks and must incorporate mechanisms for determining social influence among users on each topic of interest. Consequently, for these approaches, it becomes difficult or even unfeasible to deal quickly and efficiently with constant changes in the structure of social networks. This problem is particularly relevant as the topics of interest of users and the social influence they exert on each other for every topic are considered together. In this work, it is proposed a scalable solution, that makes use of data mining over an information propagation log, in order to directly select the initial set of influential users on a particular topic without the need to incorporate a previous step for learning users social influence with regard to that topic. As an additional benefit, the targeted seed set also offers an approximation guarantee of the optimal solution. Finally, it is presented a design of experiments over a data set containing information propagation data from a real social network. As main results, we have found some evidences that the proposed solution maintains a trade-off between scalability and accuracy.
以主题意识为基础的最大化社会影响力的方法
社会网络的使用显示了信息传播和舆论形成的巨大潜力。一个引起研究人员兴趣的关键问题是基于主题的影响力最大化,这是指在社交网络上找到一小部分用户,他们有能力影响给定主题的大部分用户。然而,所提出的解决方案不适合大规模的社交网络,必须包含确定用户对每个感兴趣主题的社会影响的机制。因此,对于这些方法来说,快速有效地处理社会网络结构的不断变化变得困难甚至不可行的。这个问题是特别相关的,因为用户感兴趣的话题和他们对每个话题相互施加的社会影响是一起考虑的。在这项工作中,提出了一种可扩展的解决方案,该解决方案利用信息传播日志上的数据挖掘,以便直接选择特定主题上有影响力的用户的初始集合,而无需合并先前的步骤来学习用户对该主题的社会影响力。作为一个额外的好处,目标种子集还提供了最优解的近似保证。最后,提出了一种基于真实社会网络的信息传播数据集的实验设计。作为主要结果,我们发现了一些证据,表明所提出的解决方案保持了可伸缩性和准确性之间的权衡。
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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