利用特征对进行入侵检测的集成学习

Michael Milliken, Y. Bi, L. Galway, G. Hawe
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引用次数: 8

摘要

网络入侵可能非法获取数据/信息,或阻止合法访问。网络入侵的可靠检测是一个重要问题,对入侵的错误分类本身就会降低检测的整体准确性。存在多种潜在的方法来开发一个改进的系统,以更准确地执行分类。特征选择是一个潜在的领域,可以通过最初识别相关的和非冗余的特征集和子集来成功地提高性能。本文对特征的显式配对进行了研究,以确定配对的存在是否对分类有积极影响,从而有可能提高正确检测入侵的准确性。特别地,介绍了使用集成算法StackingC进行分类,该算法具有F-Measure性能和派生的信息增益比,以及它们随后作为组合度量的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble learning utilising feature pairings for intrusion detection
Network intrusions may illicitly retrieve data/information, or prevent legitimate access. Reliable detection of network intrusions is an important problem, misclassification of an intrusion is an issue in and of itself reducing overall accuracy of detection. A variety of potential methods exist to develop an improved system to perform classification more accurately. Feature selection is one potential area that may be utilized to successfully improve performance by initially identifying sets and subsets of features that are relevant and nonredundant. Within this paper explicit pairings of features have been investigated in order to determine if the presence of pairings has a positive effect on classification, potentially increasing the accuracy of detecting intrusions correctly. In particular, classification using the ensemble algorithm, StackingC, with F-Measure performance and derived Information Gain Ratio, as well as their subsequent correlation as a combined measure, is presented.
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