使用击键动态查找保加利亚语互联网用户的年龄和教育水平

Denitsa Grunova, Ioannis Tsimperidis
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摘要

信息通信技术的快速发展和互联网的广泛使用,使得基于行为生物特征数据分析的高级用户认证方法势在必行。与传统的身份验证技术(例如简单使用密码)相比,这些新方法面临着在更复杂的级别对用户进行身份验证的挑战,甚至在初始验证之后也是如此。这一点尤其重要,因为它有助于解决伪造和向未经授权的个人披露个人信息的可能性等风险。在这项研究中,选择使用击键动力学作为一种生物特征,这是用户使用键盘的方式。具体来说,一些说保加利亚语的用户在日常键盘使用过程中被记录下来,然后实现了一个系统,该系统在机器学习模型的帮助下,识别某些获得的或内在的特征,以揭示他们的部分身份。研究结果显示,我们可以根据用户所属的年龄组别和受教育程度,使用击键动力学对用户进行分类,准确率很高,这是一个强有力的迹象,表明我们可以开发应用程序,以提高用户的安全性,并方便他们使用互联网服务。
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Finding the Age and Education Level of Bulgarian-Speaking Internet Users Using Keystroke Dynamics
The rapid development of information and communication technologies and the widespread use of the Internet has made it imperative to implement advanced user authentication methods based on the analysis of behavioural biometric data. In contrast to traditional authentication techniques, such as the simple use of passwords, these new methods face the challenge of authenticating users at more complex levels, even after the initial verification. This is particularly important as it helps to address risks such as the possibility of forgery and the disclosure of personal information to unauthorised individuals. In this study, the use of keystroke dynamics has been chosen as a biometric, which is the way a user uses the keyboard. Specifically, a number of Bulgarian-speaking users have been recorded during their daily keyboard use, and then a system has been implemented which, with the help of machine learning models, recognises certain acquired or intrinsic characteristics in order to reveal part of their identity. The results show that users can be categorised using keystroke dynamics, in terms of the age group they belong to and in terms of their educational level, with high accuracy rates, which is a strong indication for the creation of applications to enhance user security and facilitate their use of Internet services.
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