鼠标动态的连续身份验证:模式增长方法

Chao Shen, Zhongmin Cai, X. Guan
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引用次数: 105

摘要

鼠标动力学是根据单个用户的鼠标操作特性来识别单个用户的过程。虽然以前的工作已经报道了一些有希望的结果,但鼠标动力学仍然是一种新兴的技术,尚未达到可接受的性能水平。其中一个主要原因是内在的行为变异性。本研究提出了一种新的方法,利用基于模式增长的挖掘方法提取稳定的鼠标特征中的频繁行为片段,采用一类分类算法执行连续用户认证任务。实验结果表明,从频率行为片段中提取的小鼠特征比从整体行为片段中提取的小鼠特征稳定得多,该方法达到了实用的性能水平,FAR为0.37%,FRR为1.12%。这些发现表明,鼠标动态足以成为传统身份验证系统的显著增强。我们的数据集是公开的,以促进未来的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Continuous authentication for mouse dynamics: A pattern-growth approach
Mouse dynamics is the process of identifying individual users based on their mouse operating characteristics. Although previous work has reported some promising results, mouse dynamics is still a newly emerging technique and has not reached an acceptable level of performance. One of the major reasons is intrinsic behavioral variability. This study presents a novel approach by using pattern-growth-based mining method to extract frequent-behavior segments in obtaining stable mouse characteristics, employing one-class classification algorithms to perform the task of continuous user authentication. Experimental results show that mouse characteristics extracted from frequent-behavior segments are much more stable than those from holistic behavior, and the approach achieves a practically useful level of performance with FAR of 0.37% and FRR of 1.12%. These findings suggest that mouse dynamics suffice to be a significant enhancement for a traditional authentication system. Our dataset is publicly available to facilitate future research.
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