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Comparison of Feature Vectors in Keystroke Dynamics: A Novelty Detection Approach

机译:击键动力学中特征向量的比较:一种新颖的检测方法

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摘要

A number of current applications require algorithms able to extract a model from one-class data and classify unseen data as self or non-self in a novelty detection scenario, such as spam identification and intrusion detection. In this paper the authors focus on keystroke dynamics, which analyses the user typing rhythm to improve the reliability of user authentication process. However, several different features may be extracted from the typing data, making it difficult to define the feature vector. This problem is even more critical in a novelty detection scenario, when data from the negative class is not available. Based on a keystroke dynamics review, this work evaluated the most used features and evaluated which ones are more significant to differentiate a user from another using keystroke dynamics. In order to perform this evaluation, the authors tested the impact on two benchmark databases applying bio-inspired algorithms based on neural networks and artificial immune systems.
机译:当前的许多应用要求算法能够从一类数据中提取模型,并在垃圾邮件识别和入侵检测等新颖性检测方案中将看不见的数据分类为自身或非自身。在本文中,作者专注于击键动力学,它分析了用户键入节奏以提高用户身份验证过程的可靠性。但是,可能会从键入数据中提取几个不同的特征,这使得很难定义特征向量。当否定类的数据不可用时,在新颖性检测方案中,此问题甚至更为严重。基于击键动态审查,这项工作评估了最常用的功能,并评估了哪些功能在通过击键动态将用户与其他用户区分开来方面更为重要。为了进行这项评估,作者测试了对两个基准数据库的影响,这些数据库应用了基于神经网络和人工免疫系统的生物启发算法。

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