...
首页> 外文期刊>Security Informatics >Early warning analysis for social diffusion events
【24h】

Early warning analysis for social diffusion events

机译:社会传播事件的预警分析

获取原文
   

获取外文期刊封面封底 >>

       

摘要

There is considerable interest in developing predictive capabilities for social diffusion processes, for instance to permit early identification of emerging contentious situations, rapid detection of disease outbreaks, or accurate forecasting of the ultimate reach of potentially “viral” ideas or behaviors. This paper proposes a new approach to this predictive analytics problem, in which analysis of meso-scale network dynamics is leveraged to generate useful predictions for complex social phenomena. We begin by deriving a stochastic hybrid dynamical systems (S-HDS) model for diffusion processes taking place over social networks with realistic topologies; this modeling approach is inspired by recent work in biology demonstrating that S-HDS offer a useful mathematical formalism with which to represent complex, multi-scale biological network dynamics. We then perform formal stochastic reachability analysis with this S-HDS model and conclude that the outcomes of social diffusion processes may depend crucially upon the way the early dynamics of the process interacts with the underlying network’s community structure and core-periphery structure . This theoretical finding provides the foundations for developing a machine learning algorithm that enables accurate early warning analysis for social diffusion events. The utility of the warning algorithm, and the power of network-based predictive metrics, are demonstrated through an empirical investigation of the propagation of political “memes” over social media networks. Additionally, we illustrate the potential of the approach for security informatics applications through case studies involving early warning analysis of large-scale protests events and politically-motivated cyber attacks.
机译:开发社交扩散过程的预测能力引起了极大的兴趣,例如,可以早期识别新出现的争议情况,快速发现疾病暴发或准确预测潜在“病毒”思想或行为的最终范围。本文提出了一种解决此预测分析问题的新方法,其中利用对中尺度网络动力学的分析为复杂的社会现象生成有用的预测。首先,我们为在具有现实拓扑的社交网络上发生的扩散过程推导随机混合动力系统(S-HDS)模型;这种建模方法受到生物学领域最新研究的启发,证明S-HDS提供了一种有用的数学形式主义,可以用来表示复杂的,多尺度的生物网络动力学。然后,我们使用此S-HDS模型执行正式的随机可达性分析,并得出结论,社会扩散过程的结果可能关键取决于过程的早期动态与基础网络的社区结构和核心外围结构相互作用的方式。这一理论发现为开发机器学习算法提供了基础,该算法可对社交扩散事件进行准确的预警分析。通过对社交媒体网络上政治“模因”传播的实证研究,证明了警告算法的实用性以及基于网络的预测指标的功能。此外,我们通过案例研究来说明该方法在安全信息学应用中的潜力,该案例研究涉及对大规模抗议活动和出于政治动机的网络攻击的预警分析。

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