使用ARTMAP-FD神经网络的击键模式分类

Chen Change Loy, W. Lai, C. Lim
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引用次数: 77

摘要

本文利用ARTMAP-FD神经网络开发了一个基于按键动力学的用户认证系统。分析了ARTMAP- FD在分类击键模式方面的有效性,并与许多广泛使用的机器学习系统进行了比较。结果表明,ARTMAP-FD在击键模式分类中表现良好。此外,研究了打字压力在识别用户身份方面的适用性,而不是使用传统的打字时间特征。实验结果表明,延时模式和压力模式相结合可以提高系统的等错误率(ERR)。
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Keystroke Patterns Classification Using the ARTMAP-FD Neural Network
This paper presents the development of a keystroke dynamics-based user authentication system using the ARTMAP-FD neural network. The effectiveness of ARTMAP- FD in classifying keystroke patterns is analyzed and compared against a number of widely used machine learning systems. The results show that ARTMAP-FD performs well against many of its counterparts in keystroke patterns classification. Apart from that, instead of using the conventional typing timing characteristics, the applicability of typing pressure to ascertaining user's identity is investigated. The experimental results show that combining both latency and pressure patterns can improve the equal error rate (ERR) of the system.
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