移动伪装检测的分类器组合技术比较

O. Mazhelis, S. Puuronen
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引用次数: 7

摘要

当代的移动终端(智能手机、掌上电脑、通信器)经常被用来存储或访问敏感的私人或公司信息,未经授权使用这些终端可能会导致这些信息被滥用。为了抵抗这种未经授权的使用,可以使用传统的身份验证机制和伪装检测手段。本文将移动伪装器检测问题作为一个分类问题来研究。检测基于对当前用户行为和环境的监控,并将其与合法用户的行为和环境进行匹配。匹配是由所谓的单类分类器的集合执行的,每个分类器分析一组单独的行为或环境特征,并将这些特征的当前值分类为属于合法用户或不属于合法用户。采用组合方案,将这些分类器的各个分类组合起来,以提高最终的分类精度。在移动伪装检测的背景下,对三种组合方案进行了经验比较;它们是估计概率的均值(MP)、概率的乘积组合(PP)和估计概率的修正均值(modMP)规则。实验结果表明,modMP规则在移动伪装器检测中的应用是合理的,因为该规则提供的分类精度大于或近似等于其他规则的精度。同时,得到的结果表明,为了使modMP规则提供较高的分类精度,需要准确估计分类器输出的均值
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing Classifier Combining Techniques for Mobile-Masquerader Detection
Contemporary mobile terminals (smartphones, PDAs, communicators) are often used to store or access sensitive private or corporate information, and an unauthorized use of these terminals may result in an abuse of this information. In order to resist such unauthorized use, along with traditional authentication mechanisms, the means of masquerader detection can be employed. In this paper, the problem of mobile-masquerader detection is approached as a classification problem. The detection is based on the monitoring of the current user behavior and environment, and matching them with the behavior and the environment of the legitimate user. The matching is performed by an ensemble of the so-called one-class classifiers each analyzing a separate set of behavioral or environmental features, and classifying the current values of these features as belonging to the legitimate user or not. Using a combining scheme, the individual classifications of these classifiers are combined so as to improve the final classification accuracy. In the paper, three combining schemes are empirically compared in the context of mobile-masquerader detection; these are the mean of the estimated probabilities (MP), the product combination of probabilities (PP), and the modified mean of the estimated probabilities (modMP) rules. According to the results of experiments, the use of modMP rule is justified in mobile-masquerader detection, since this rule provides the classification accuracy greater than or approximately equal to the accuracy of the other rules. Meanwhile, the obtained results suggest that, for the modMP rule to provide high classification accuracy, the means of the classifier outputs need to be estimated accurately
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