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Characterization and Detection of Malicious Behavior on the Web

机译:Web上恶意行为的表征和检测

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摘要

Web platforms enable unprecedented speed and ease in transmission of knowledge, and allow users to communicate and shape opinions. However, the safety, usability and reliability of these platforms is compromised by the prevalence of online malicious behavior --- for example 40% of users have experienced online harassment. This is present in the form of malicious users, such as trolls, sockpuppets and vandals, and misinformation, such as hoaxes and fraudulent reviews. This thesis presents research spanning two aspects of malicious behavior: characterization of their behavioral properties, and development of algorithms and models for detecting them.;We characterize the behavior of malicious users and misinformation in terms of their activity, temporal frequency of actions, network connections to other entities, linguistic properties of how they write, and community feedback received from others. We find several striking characteristics of malicious behavior that are very distinct from those of benign behavior. For instance, we find that vandals and fraudulent reviewers are faster in their actions compared to benign editors and reviewers, respectively. Hoax articles are long pieces of plain text that are less coherent and created by more recent editors, compared to non-hoax articles. We find that sockpuppets are created that vary in their deceptiveness (i.e., whether they pretend to be different users) and their supportiveness (i.e., if they support arguments of other sockpuppets controlled by the same user).;We create a suite of feature based and graph based algorithms to efficiently detect malicious from benign behavior. We first create the first vandal early warning system that accurately predicts vandals using very few edits. Next, based on the properties of Wikipedia articles, we develop a supervised machine learning classifier to predict whether an article is a hoax, and another that predicts whether a pair of accounts belongs to the same user, both with very high accuracy. We develop a graph-based decluttering algorithm that iteratively removes suspicious edges that malicious users use to masquerade as benign users, which outperforms existing graph algorithms to detect trolls. And finally, we develop an efficient graph-based algorithm to assess the fairness of all reviewers, reliability of all ratings, and goodness of all products, simultaneously, in a rating network, and incorporate penalties for suspicious behavior. Overall, in this thesis, we develop a suite of five models and algorithms to accurately identify and predict several distinct types of malicious behavior --- namely, vandals, hoaxes, sockpuppets, trolls and fraudulent reviewers -- in multiple web platforms.;The analysis leading to the algorithms develops an interpretable understanding of malicious behavior on the web.
机译:Web平台以前所未有的速度和轻松的知识传输速度,并允许用户交流和塑造观点。但是,在线恶意行为的普遍存在损害了这些平台的安全性,可用性和可靠性,例如40%的用户经历了在线骚扰。这以恶意用户(例如巨魔,短袜和破坏者)以及错误信息(例如恶作剧和欺诈性评论)的形式出现。本文对恶意行为进行了研究,涵盖了恶意行为的两个方面:表征其行为特性以及开发用于检测恶意行为的算法和模型。;我们根据恶意软件的行为,行为的时间频率,网络连接来表征恶意用户的行为和错误信息其他实体的语言属性,以及他们从其他社区收到的反馈。我们发现恶意行为的几个明显特征与良性行为截然不同。例如,我们发现破坏者和欺诈性审阅者的行为分别比良性编辑者和审阅者更快。骗局文章是纯文本的长篇文章,与非骗局文章相比,它们的连贯性较低,由新近的编辑创建。我们发现,所创建的sockpuppets的欺骗性(即,它们是否假装为不同的用户)及其支持能力(即,如果它们支持由同一用户控制的其他sockpuppets的参数)有所不同。以及基于图的算法可以有效地从良性行为中检测出恶意软件。我们首先创建了第一个恶意破坏预警系统,该系统只需很少的编辑就可以准确预测恶意破坏。接下来,基于Wikipedia文章的属性,我们开发了一种受监督的机器学习分类器,以预测某篇文章是否是恶作剧,以及另一种可以预测一对客户是否属于同一用户的骗局,两者的准确性都很高。我们开发了一种基于图的整理算法,该算法可反复删除恶意用户伪装成良性用户的可疑边缘,其性能优于现有的图算法来检测巨魔。最后,我们开发了一种基于图形的高效算法,可在一个评级网络中同时评估所有审阅者的公平性,所有评级的可靠性和所有产品的优劣,并纳入对可疑行为的惩罚。总体而言,在本文中,我们开发了一套包含五个模型和算法的套件,以在多个Web平台上准确识别和预测几种不同类型的恶意行为-即破坏者,骗局,假冒伪造品,巨魔和欺诈性审阅者。导致算法的分析可以对网络上的恶意行为产生可解释的理解。

著录项

  • 作者

    Kumar, Srijan.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Computer science.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 225 p.
  • 总页数 225
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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