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Anatomy of secondary features in keystroke dynamics - achieving more with less

机译:按键动力学的次要特征剖析-事半功倍

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Keystroke dynamics is an effective behavioral biometric for user authentication at a computer terminal. While many distinctive features have been used for the analysis of acquired user patterns and verification of users transparently, a group of features such as Shift and Comma has always been overlooked and treated as noise. In this paper, we define these normally ignored features as secondary features and investigate their effectiveness in user verification/authentication. By evaluating all the available secondary features, we have found that they contain valuable information that is characteristic of individuals. With a limited number of secondary features, we achieved a promising Equal Error Rate (EER) of 2.94% and Area Under the ROC Curve (AUC) of 0.9940 for classification on a publicly available data set. Surprisingly, this result compares well with the results obtained from primary features by other researchers and we are able to achieve quality results with fewer data records, indicating a reduced training time in comparison.
机译:击键动态是计算机终端在用户身份验证的有效行为生物识别。虽然许多独特的特征已被用于分析获得的用户模式和透明用户的验证,但是一组诸如Shift和Comma的特征始终被忽视并被视为噪声。在本文中,我们将这些正常忽略的功能定义为辅助特征,并调查其在用户验证/身份验证中的有效性。通过评估所有可用的二级功能,我们发现它们包含具有个人特征的有价值的信息。通过有限数量的次要特征,我们在ROC曲线(AUC)下实现了2.94 \%的有希望的相当误差率(eer),为0.9940的ROC曲线(AUC),以便在公开的数据集上进行分类。令人惊讶的是,这种结果与其他研究人员的主要特征获得的结果相比,我们能够通过更少的数据记录来实现质量结果,表明相比之下的培训时间。

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