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Stress level detection via OSN usage pattern and chronicity analysis: An OSINT threat intelligence module

机译:通过OSN使用模式和长期性分析进行压力水平检测:一个OSINT威胁情报模块

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摘要

Online Social Networks (OSN) are not only a popular communication and entertainment platform but also a means of self-representation. In this paper, we adopt an interdisciplinary approach combining Open Source Intelligence (OSINT) and user-generated content classification techniques with a user-driven stress test as applied to a Greek community of OSN users. The main goal of the paper is to study the chronicity of the stress level users experience, as depicted by OSN user generated content. In order to achieve that, we investigate whether collected data are able to facilitate the process of stress level detection. To this end, we perform unsupervised flat data classification of the user-generated content and formulate two working clusters which classify usage patterns that depict medium-to-low and medium-to-high stress levels respectively. To address the main goal of the paper, we divide user-generated content into chronologically defined sub-periods in order to study potential usage fluctuations over time. To this extent, we follow a process that includes (a) content classification into predefined categories of interest, (b) usage pattern metrics extraction and (c) metrics and clusters utilisation towards usage pattern fluctuation detection both through the prism of users' usual usage pattern and its correlation to the depicted stress level. Such an approach enables detection of time periods when usage pattern deviates from the usual and correlates such deviations to user experienced stress level. Finally, we highlight and comment on the emerging ethical issues regarding the classification of OSN user-generated content.
机译:在线社交网络(OSN)不仅是一种流行的通信和娱乐平台,还是一种自我表达的手段。在本文中,我们采用跨学科方法,将开放源代码智能(OSINT)和用户生成的内容分类技术与用户驱动的压力测试相结合,应用于希腊OSN用户社区。本文的主要目的是研究OSN用户生成的内容所描绘的用户压力水平的长期性。为了实现这一点,我们调查收集的数据是否能够促进压力水平检测的过程。为此,我们对用户生成的内容执行无监督的平面数据分类,并制定两个工作集群,对使用模式进行分类,分别描述中低压力水平和中高压力水平。为了解决本文的主要目标,我们将用户生成的内容按时间顺序定义为子时段,以研究随时间变化的潜在使用波动。在这个程度上,我们遵循一个过程,该过程包括(a)将内容分类到预定的兴趣类别中;(b)使用模式指标提取;以及(c)通过用户的常规用法来实现针对使用模式波动检测的指标和群集利用率模式及其与所示应力水平的相关性。这种方法使得能够检测使用模式偏离通常情况的时间段,并将这种偏离与用户体验到的压力水平相关联。最后,我们重点介绍和评论有关OSN用户生成内容分类的新兴伦理问题。

著录项

  • 来源
    《Computers & Security》 |2017年第8期|3-17|共15页
  • 作者单位

    Information Security & Critical Infrastructure Protection (INFOSEC) Laboratory, Department of Informatics, Athens University of Economics & Business (AUEB), 76 Patission Ave., Athens GR-10434, Greece;

    Information Security & Critical Infrastructure Protection (INFOSEC) Laboratory, Department of Informatics, Athens University of Economics & Business (AUEB), 76 Patission Ave., Athens GR-10434, Greece;

    Information Security & Critical Infrastructure Protection (INFOSEC) Laboratory, Department of Informatics, Athens University of Economics & Business (AUEB), 76 Patission Ave., Athens GR-10434, Greece;

    Information Security & Critical Infrastructure Protection (INFOSEC) Laboratory, Department of Informatics, Athens University of Economics & Business (AUEB), 76 Patission Ave., Athens GR-10434, Greece;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Online Social Networks (OSN); Open Source Intelligence (OSINT); Privacy; Usage pattern deviation; Stress detection; Insider threat; Threat intelligence;

    机译:在线社交网络(OSN);开源情报(OSINT);隐私;使用模式偏差;压力检测;内部威胁;威胁情报;

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