基于特征聚类的网络入侵与异常检测隶属函数

Arun Nagaraja, Shylendra Kumar
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引用次数: 13

摘要

随着新攻击在一段时间内不断涌现,检测入侵和异常变得越来越具有挑战性。应用用于识别入侵和异常的算法实现更高的准确性存在几个隐藏的数据挖掘挑战。尽管被许多研究结果所忽视,但相似性计算是最重要也是最大的挑战之一。另一个不容忽视的挑战是归因于维度的特征数量。本研究旨在提出一种新的隶属函数进行相似度计算,有助于解决特征维数问题。原则上,这项工作仅限于引入新的隶属函数,该函数可以帮助实现更好的分类准确性,并最终导致更好的入侵和异常检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Membership Function for Feature Clustering Based Network Intrusion and Anomaly Detection
Detecting Intrusions and anomalies is becoming much more challenging with new attacks popping out over a period of time. Achieving better accuracies applying algorithms used for identifying intrusions and anomalies has several hidden data mining challenges. Although neglected by many research findings, one of the most important and biggest challenges is the similarity computation. Another challenge that cannot be simply neglected is the number of features that attributes to dimensionality. This research aims to come up with a new membership function to carry similarity computation that can be helpful for addressing feature dimensionality issues. In principle, this work is limited at introducing a novel membership function that can help to achieve better classification accuracies and eventually lead to better intrusion and anomaly detection.
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