结合Naïve贝叶斯和霍纳规则均值的击键动态认证分类分析

Zamah Sari, Didih Rizki Chandranegara, Rahayu Nurul Khasanah, Hardianto Wibowo, Wildan Suharso
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引用次数: 0

摘要

击键动力学身份验证(KDA)是一种用于根据系统中的输入模式或输入节奏识别某人的技术。每个人的打字行为都是独一无二的。保护私人信息的众多方法之一是使用密码。随着信息盗窃的黑客能力(破解密码)的进一步发展,人类对信息安全和保护的需求也随之发展。这样黑客就可以利用这些信息为自己谋利,也可以使他人处于不利地位。因此,为了更好的安全性,例如,热烈建议指纹,视网膜扫描等。但是这些技术被认为是昂贵的。KDA的优点是用户不会意识到系统正在使用KDA。因此,我们提出了Naïve贝叶斯和MHR(霍纳平均规则)相结合的方法来对个体进行攻击者和非攻击者的分类。我们使用Naïve贝叶斯,因为它更适合分类,而且比其他方法更容易实现。此外,如果将MHR与基于前人研究的分类方法相结合,则可以更好地用于KDA。研究表明,该方法的误接受率(FAR)和准确率都比以往的研究方法有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of the Combination of Naïve Bayes and MHR (Mean of Horner’s Rule) for Classification of Keystroke Dynamic Authentication
Keystroke Dynamics Authentication (KDA) is a technique used to recognize somebody dependent on typing pattern or typing rhythm in a system. Everyone's typing behavior is considered unique. One of the numerous approaches to secure private information is by utilizing a password. The development of technology is trailed by the human requirement for security concerning information and protection since hacker ability of information burglary has gotten further developed (hack the password). So that hackers can use this information for their benefit and can disadvantage others. Hence, for better security, for example, fingerprint, retina scan, et cetera are enthusiastically suggested. But these techniques are considered costly. The advantage of KDA is the user would not realize that the system is using KDA. Accordingly, we proposed the combination of Naïve Bayes and MHR (Mean of Horner’s Rule) to classify the individual as an attacker or a non-attacker. We use Naïve Bayes because it is better for classification and simple to implement than another. Furthermore, MHR is better for KDA if combined with the classification method which is based on previous research. This research showed that False Acceptance Rate (FAR) and Accuracy are improving than the previous research.
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