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Identification of User Behavioral Biometrics for Authentication using Keystroke Dynamics and Machine Learning

机译:使用击键动力学和机器学习识别用于认证的用户行为生物特征

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摘要

This thesis focuses on the effective classification of the behavior of users accessing computing devices to authenticate them. The authentication is based on keystroke dynamics, which captures the users behavioral biometric and applies machine learning concepts to classify them. The users type a strong passcode ".tie5Roanl" to record their typing pattern. In order to confirm identity, anonymous data from 94 users were collected to carry out the research. Given the raw data, features were extracted from the attributes based on the button pressed and action timestamp events. The support vector machine classifier uses multi-class classification with one vs. one decision shape function to classify different users. To reduce the classification error, it is essential to identify the important features from the raw data. In an effort to confront the generation of features from attributes an efficient feature extraction algorithm has been developed, obtaining high classification performance are now being sought. To handle the multi-class problem, the random forest classifier is used to identify the users effectively.;In addition, mRMR feature selection has been applied to increase the classification performance metrics and to confirm the identity of the users based on the way they access computing devices. From the results, we conclude that device information and touch pressure effectively contribute to identifying each user. Out of them, features that contain device information are responsible for increasing the performance metrics of the system by adding a token-based authentication layer. Based upon the results, random forest yields better classification results for this dataset. The research will contribute significantly to the field of cyber-security by forming a robust authentication system using machine learning algorithms.
机译:本文着重于对用户访问计算设备进行身份验证的行为的有效分类。身份验证基于击键动态,它捕获了用户的行为生物特征,并应用了机器学习概念对其进行分类。用户键入一个强密码“ .tie5Roanl”以记录其键入模式。为了确认身份,收集了来自94位用户的匿名数据以进行研究。给定原始数据,基于按下的按钮和动作时间戳记事件从属性中提取特征。支持向量机分类器使用具有一比一个决策形状函数的多类分类来对不同用户进行分类。为了减少分类错误,必须从原始数据中识别重要特征。为了应对从属性生成特征的问题,已经开发了一种有效的特征提取算法,现在正在寻求获得高分类性能。为了解决多类别问题,使用了随机森林分类器来有效地识别用户。此外,mRMR功能选择已被应用来增加分类性能指标并根据用户访问的方式来确认用户的身份。计算设备。从结果可以得出结论,设备信息和触摸压力有效地有助于识别每个用户。其中,包含设备信息的功能可通过添加基于令牌的身份验证层来提高系统的性能指标。根据结果​​,随机森林对该数据集产生更好的分类结果。通过使用机器学习算法形成强大的身份验证系统,该研究将对网络安全领域做出重大贡献。

著录项

  • 作者

    Krishnamoorthy, Sowndarya.;

  • 作者单位

    University of Windsor (Canada).;

  • 授予单位 University of Windsor (Canada).;
  • 学科 Computer science.
  • 学位 M.A.Sc.
  • 年度 2018
  • 页码 86 p.
  • 总页数 86
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:53:33

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