首页> 外文OA文献 >Multimodal Data Fusion and Behavioral Analysis Tooling for Exploring Trust, Trust-propensity, and Phishing Victimization in Online Environments
【2h】

Multimodal Data Fusion and Behavioral Analysis Tooling for Exploring Trust, Trust-propensity, and Phishing Victimization in Online Environments

机译:多模式数据融合和行为分析工具,用于探索在线环境中的信任,信任倾向和网络钓鱼受害

摘要

Online environments, including email and social media platforms, are continuously threatened by malicious content designed by attackers to install malware on unsuspecting users and/or phish them into revealing sensitive data about themselves. Often slipping past technical mitigations (e.g. spam filters), attacks target the human element and seek to elicit trust as a means of achieving their nefarious ends. Victimized end-users lack the discernment, visual acuity, training, and/or experience to correctly identify the nefarious antecedents of trust that should prompt suspicion. Existing literature has explored trust, trust-propensity, and victimization, but studies lack data capture richness, realism, and/or the ability to investigate active user interactions. This paper defines a data collection and fusion approach alongside new open-sourced behavioral analysis tooling that addresses all three factors to provide researchers with empirical, evidence-based, insights into active end-user trust behaviors. The approach is evaluated in terms of comparative analysis, run-time performance, and fused data accuracy.
机译:攻击者设计的恶意内容不断威胁在线环境(包括电子邮件和社交媒体平台),这些恶意内容旨在将恶意软件安装在毫无戒心的用户上和/或诱骗他们泄露有关自身的敏感数据。攻击通常会绕过技术缓解措施(例如垃圾邮件过滤器),以人为因素作为攻击目标,并寻求引起信任,以此作为实现其邪恶目的的一种手段。受害的最终用户缺乏辨别力,视敏度,培训和/或经验,无法正确识别应该引起怀疑的邪恶的信任前因。现有文献已经探讨了信任,信任倾向和受害,但是研究缺乏数据捕获的丰富性,真实性和/或调查活跃用户交互的能力。本文定义了一种数据收集和融合方法,以及新的开源行为分析工具,该工具解决了所有这三个因素,为研究人员提供了基于经验的,基于证据的洞察力,以了解活跃的最终用户信任行为。根据比较分析,运行时性能和融合数据准确性评估了该方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

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