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RBN:基于击键动力学的教育水平分类自适应模型。

RBN: An Adaptive Model for Keystroke-Dynamics-Based Educational Level Classification.

出版信息

IEEE Trans Cybern. 2020 Feb;50(2):525-535. doi: 10.1109/TCYB.2018.2869658. Epub 2018 Sep 28.

Abstract

Over the past decade, keystroke-based pattern recognition techniques, as a forensic tool for behavioral biometrics, have gained increasing attention. Although a number of machine learning-based approaches have been proposed, they are limited in terms of their capability to recognize and profile a set of an individual's characteristics. In addition, up to today, their focus was primarily gender and age, which seem to be more appropriate for commercial applications (such as developing commercial software), leaving out from research other characteristics, such as the educational level. Educational level is an acquired user characteristic, which can improve targeted advertising, as well as provide valuable information in a digital forensic investigation, when it is known. In this context, this paper proposes a novel machine learning model, the randomized radial basis function network, which recognizes and profiles the educational level of an individual who stands behind the keyboard. The performance of the proposed model is evaluated by using the empirical data obtained by recording volunteers' keystrokes during their daily usage of a computer. Its performance is also compared with other well-referenced machine learning models using our keystroke dynamic datasets. Although the proposed model achieves high accuracy in educational level prediction of an unknown user, it suffers from high computational cost. For this reason, we examine ways to reduce the time that is needed to build our model, including the use of a novel data condensation method, and discuss the tradeoff between an accurate and a fast prediction. To the best of our knowledge, this is the first model in the literature that predicts the educational level of an individual based on the keystroke dynamics information only.

摘要

在过去的十年中,基于击键模式识别技术作为行为生物识别的取证工具,已经引起了越来越多的关注。虽然已经提出了许多基于机器学习的方法,但它们在识别和分析个人特征方面的能力有限。此外,直到今天,它们的重点主要是性别和年龄,这似乎更适合商业应用(例如开发商业软件),而忽略了其他特征的研究,例如教育水平。教育水平是一种后天获得的用户特征,当已知时,可以改善定向广告,并在数字取证调查中提供有价值的信息。在这种情况下,本文提出了一种新颖的机器学习模型,即随机径向基函数网络,该模型可以识别和分析键盘后面的个人的教育水平。通过使用记录志愿者在日常使用计算机时的击键所获得的经验数据来评估所提出模型的性能。还使用我们的击键动态数据集将其性能与其他参考良好的机器学习模型进行了比较。虽然所提出的模型在预测未知用户的教育水平方面具有很高的准确性,但它存在计算成本高的问题。为此,我们研究了减少构建模型所需时间的方法,包括使用新的数据压缩方法,并讨论了准确预测和快速预测之间的权衡。据我们所知,这是文献中第一个仅基于击键动力学信息预测个人教育水平的模型。

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