Sensitivity analysis in keystroke dynamics using convolutional neural networks

Hayreddin Çeker, S. Upadhyaya
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引用次数: 37

Abstract

Biometrics has become ubiquitous and spurred common use in many authentication mechanisms. Keystroke dynamics is a form of behavioral biometrics that can be used for user authentication while actively working at a terminal. The proposed mechanisms involve digraph, trigraph and n-graph analysis as separate solutions or suggest a fusion mechanism with certain limitations. However, deep learning can be used as a unifying machine learning technique that consolidates the power of all different features since it has shown tremendous results in image recognition and natural language processing. In this paper, we investigate the applicability of deep learning on three different datasets by using convolutional neural networks and Gaussian data augmentation technique. We achieve 10% higher accuracy and 7.3% lower equal error rate (EER) than existing methods. Also, our sensitivity analysis indicates that the convolution operation and the fully-connected layer are the most prominent factors that affect the accuracy and the convergence rate of a network trained with keystroke data.
基于卷积神经网络的按键动力学灵敏度分析
生物识别技术已经变得无处不在,并在许多身份验证机制中得到了普遍应用。击键动力学是一种行为生物识别技术,可用于在终端上工作时进行用户身份验证。所提出的机制包括有向图、三向图和n图分析作为单独的解决方案,或者提出一种具有一定局限性的融合机制。然而,深度学习可以作为一种统一的机器学习技术,巩固所有不同特征的力量,因为它在图像识别和自然语言处理方面显示出巨大的成果。本文利用卷积神经网络和高斯数据增强技术研究了深度学习在三种不同数据集上的适用性。与现有方法相比,该方法的准确率提高了10%,等效错误率(EER)降低了7.3%。此外,我们的灵敏度分析表明,卷积操作和全连接层是影响使用击键数据训练的网络的准确性和收敛速度的最突出因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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