Feature Selection Using Euclidean Distance and Cosine Similarity for Intrusion Detection Model

A. Suebsing, N. Hiransakolwong
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引用次数: 17

Abstract

Nowadays, data mining plays an important role in many sciences, including intrusion detection system (IDS). However, one of the essential steps of data mining is feature selection, because feature selection can help improve the efficiency of prediction rate. The previous researches, selecting features in the raw data, are difficult to implement. This paper proposes feature selection based on Euclidean Distance and Cosine Similarity which ease to implement. The experiment results show that the proposed approach can select a robust feature subset to build models for detecting known and unknown attack patterns of computer network connections. This proposed approach can improve the performance of a true positive intrusion detection rate.
基于欧几里德距离和余弦相似度的入侵检测模型特征选择
如今,数据挖掘在包括入侵检测系统在内的许多科学领域中发挥着重要作用。然而,特征选择是数据挖掘的关键步骤之一,因为特征选择有助于提高预测率的效率。以往的研究都是在原始数据中选择特征,难以实现。本文提出了基于欧氏距离和余弦相似度的特征选择方法,该方法易于实现。实验结果表明,该方法可以选择一个鲁棒的特征子集来建立模型,用于检测计算机网络连接的已知和未知攻击模式。该方法可以提高真正入侵检测率的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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