【24h】

Early Warning Analysis for Social Diffusion Events

机译:社会扩散事件的预警分析

获取原文

摘要

There is considerable interest in developing predictive capabilities for social diffusion processes, for instance enabling early identification of contentious "triggering" incidents that are likely to grow into large, self-sustaining mobilization events. Recently we have shown, using theoretical analysis, that the dynamics of social diffusion may depend crucially upon the interactions of social network communities, that is, densely connected groupings of individuals which have only relatively few links to other groups. This paper presents an empirical investigation of two hypotheses which follow from this finding: 1.) the presence of even just a few inter-community links can make diffusion activity in one community a significant predictor of activity in otherwise disparate communities and 2.) very early dispersion of a diffusion process across network communities is a reliable early indicator that the diffusion will ultimately involve a substantial number of individuals. We explore these hypotheses with case studies involving emergence of the Swedish Social Democratic Party at the turn of the 20th century, the spread of SARS in 2002-2003, and blog-ging dynamics associated with potentially incendiary real world occurrences. These empirical studies demonstrate that network community-based diffusion metrics do indeed possess predictive power, and in fact can be significantly more predictive than standard measures.
机译:在开发社会扩散过程的预测能力方面存在相当大的兴趣,例如能够早期确定可能成长为大型自我维持动员事件的有争议的“触发”事件。最近,我们已经示出了使用理论分析,即社会扩散的动态可能会在很大程度上取决于社交网络社区的相互作用,即,与其他组只有相对较少的联系的个人密集的个人连接。本文提出了对来自这一发现的两个假设的实证调查:1。)甚至只有少数社区间链接的存在可以在一个社区中的扩散活动在其他差异社区和2.)中的重要预测因素。)非常跨网络社区的扩散过程的早期分散是一种可靠的早期指标,即扩散最终涉及大量的个体。我们探讨了这些假设,涉及涉及瑞典社会民主党于20世纪之交的出现的案例研究,2002 - 2003年的SARS传播,以及与潜在燃烧的现实世界发生相关的博客动态。这些实证研究表明,基于网络的基于网络的扩散度量确实具有预测力,实际上可以比标准措施更明显预测。

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