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Design and Evaluation of a Rough Set-Based Anomaly Detection Scheme Considering Weighted Feature Values

机译:基于粗糙集的异常检测方案的设计与评估考虑加权特征值

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The rapid proliferation of wireless networks and mobile computing applications has changed the landscape of network security. Anomaly detection is a pattern recognition task whose goal is to report the occurrence of abnormal or unknown behavior in a given system being monitored. This paper presents an efficient rough set based anomaly detection method that can effectively identify a group of especially harmful internal attackers - masqueraders in cellular mobile networks. Our scheme uses the trace data of wireless application layer by a user as feature value. Based on this, the use pattern of a mobile's user can be captured by rough sets, and the abnormal behavior of the mobile can be also detected effectively by applying a roughness membership function considering weighted feature values. The performance of our scheme is evaluated by a simulation.
机译:无线网络和移动计算应用的快速增殖改变了网络安全的景观。异常检测是一种模式识别任务,其目标是在被监视的给定系统中报告异常或未知行为的发生。本文介绍了基于高效的基于异常检测方法,可以有效地识别一组特别有害的内部攻击者 - 蜂窝移动网络中的伪装体。我们的方案使用用户作为特征值的无线应用层的跟踪数据。基于此,可以通过粗糙集捕获移动用户的使用模式,并且可以通过应用考虑加权特征值来有效地检测移动移动的异常行为。我们的计划的性能是通过模拟评估的。

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