键盘知道你:通过击键动力学揭示用户特征

Ioannis Tsimperidis, A. Arampatzis
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引用次数: 2

摘要

互联网上的一些问题,如金融欺诈、网络欺凌和引诱未成年人,其原因之一是恶意用户可以保持完全匿名。大多数已经提出的消除这种匿名性的方法要么是侵入性的,要么是侵犯隐私的,要么是昂贵的。本文提出通过击键动力学(即人打字的方式)来识别未知用户的某些特征。该方法的评估包括三个阶段:获取118名志愿者在日常设备使用过程中的击键动力学数据,根据其信息增益提取和选择击键动力学特征,通过训练5个知名机器学习模型测试用户特征识别。实验结果表明,该方法可以准确地识别未知用户的性别、年龄、利手性和教育程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Keyboard Knows About You: Revealing User Characteristics via Keystroke Dynamics
One of the causes of several problems on the internet, such as financial fraud, cyber-bullying, and seduction of minors, is the complete anonymity that a malicious user can maintain. Most methods that have been proposed to remove this anonymity are either intrusive, or violate privacy, or expensive. This paper proposes the recognition of certain characteristics of an unknown user through keystroke dynamics, which is the way a person is typing. The evaluation of the method consists of three stages: the acquisition of keystroke dynamics data from 118 volunteers during the daily use of their devices, the extraction and selection of keystroke dynamics features based on their information gain, and the testing of user characteristics recognition by training five well-known machine learning models. Experimental results show that it is possible to identify the gender, the age group, the handedness, and the educational level of an unknown user with high accuracy.
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