首页> 外文期刊>Entropy >Modeling Dynamics of Diffusion Across Heterogeneous Social Networks: News Diffusion in Social Media
【24h】

Modeling Dynamics of Diffusion Across Heterogeneous Social Networks: News Diffusion in Social Media

机译:跨异构社交网络的扩散动力学建模:社交媒体中的新闻扩散

获取原文
           

摘要

Diverse online social networks are becoming increasingly interconnected by sharing information. Accordingly, emergent macro-level phenomena have been observed, such as the synchronous spread of information across different types of social media. Attempting to analyze the emergent global behavior is impossible from the examination of a single social platform, and dynamic influences between different social networks are not negligible. Furthermore, the underlying structural property of networks is important, as it drives the diffusion process in a stochastic way. In this paper, we propose a macro-level diffusion model with a probabilistic approach by combining both the heterogeneity and structural connectivity of social networks. As real-world phenomena, we explore instances of news diffusion across different social media platforms from a dataset that contains over 386 million web documents covering a one-month period in early 2011. We find that influence between different media types is varied by the context of information. News media are the most influential in the arts and economy categories, while social networking sites (SNS) and blog media are in the politics and culture categories, respectively. Furthermore, controversial topics, such as political protests and multiculturalism failure, tend to spread concurrently across social media, while entertainment topics, such as film releases and celebrities, are more likely driven by interactions within single social platforms. We expect that the proposed model applies to a wider class of diffusion phenomena in diverse fields and that it provides a way of interpreting the dynamics of diffusion in terms of the strength and directionality of influences among populations.
机译:通过共享信息,多样化的在线社交网络变得越来越互连。因此,已经观察到新兴的宏观现象,例如信息在不同类型的社交媒体上的同步传播。从单个社交平台的检查来看,试图分析新兴的全球行为是不可能的,而且不同社交网络之间的动态影响也不容忽视。此外,网络的基本结构特性很重要,因为它以随机方式驱动扩散过程。在本文中,我们通过结合社交网络的异质性和结构连通性,提出了一种采用概率方法的宏观扩散模型。作为现实世界的现象,我们从一个数据集中探索了跨不同社交媒体平台的新闻传播的实例,该数据集包含超过3.86亿个Web文档,覆盖了2011年初的一个月时间。我们发现,不同媒体类型之间的影响因上下文而异信息。新闻媒体在艺术和经济类别中最具影响力,而社交网站(SNS)和博客媒体分别在政治和文化类别中。此外,诸如政治抗议和多元文化主义失败之类的争议性话题往往会同时在社交媒体上传播,而诸如电影发行和名人之类的娱乐性话题则更可能由单一社交平台内的互动所驱动。我们希望所提出的模型适用于不同领域中的一类更广泛的扩散现象,并且它提供了一种根据人口影响的强度和方向性来解释扩散动力学的方式。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号