首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >One-class naive Bayes with duration feature ranking for accurate user authentication using keystroke dynamics
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One-class naive Bayes with duration feature ranking for accurate user authentication using keystroke dynamics

机译:具有持续时间的一流的天真贝叶斯,使用击键动态排名为准确的用户身份验证

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摘要

Biometric-based approaches, including keystroke dynamics on keyboards, mice, and mobile devices, have incorporated machine learning algorithms to learn users' typing behavior for authentication systems. Among the machine learning algorithms, one-class naive Bayes (ONENB) has been shown to be effective when it is applied to anomaly tests; however, there have been few studies on applying the ONENB algorithm to keystroke dynamics-based authentication. We applied the ONENB algorithm to calculate the likelihood of attributes in keystroke dynamics data. Additionally, we propose the speed inspection in typing skills (SITS) algorithm designed from the observation that every person has a different typing speed on specific keys. These specific characteristics, also known as the keystroke's index order, can be used as essential patterns for authentication systems to distinguish between a genuine user and imposter. To further evaluate the effectiveness of the SITS algorithm and examine the quality of each attribute type (e.g., dwell time and flight time), we investigated the influence of attribute types on the keystroke's index order. From the experimental results of the proposed algorithms and their combination, we observed that the shortest/longest time attributes and separation of the attributes are useful for enhancing the performance of the proposed algorithms.
机译:基于生物识别的方法,包括键盘,小鼠和移动设备上的击键动态,已包含机器学习算法,以学习用户的键入身份验证系统的键入行为。在机器学习算法中,一流的天真凸鲈(OneNb)已被证明在应用于异常测试时有效;但是,在将ONENB算法应用于基于击键动态的身份验证的情况下,很少有研究。我们应用了OneNB算法来计算击键动态数据中属性的可能性。此外,我们提出了键入技能(坐标)算法的速度检查,从观察到每个人对特定键具有不同的打字速度。这些特定特征,也称为击键的索引顺序,可以用作认证系统的基本模式,以区分真正的用户和冒名选择。为了进一步评估坐在算法的有效性并检查每个属性类型的质量(例如,停留时间和飞行时间),我们调查了属性类型对击键索引顺序的影响。从所提出的算法及其组合的实验结果,我们观察到,最短/最长的时间属性和属性的分离对于提高所提出的算法的性能是有用的。

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