基于关联规则的PTM网络流量异常检测

Entisar E. Eljadi, Z. Othman
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引用次数: 5

摘要

为了评估UKM NIDS的质量,本文介绍了对Pusat Teknologi Maklumat (PTM)捕获的网络流量进行分析的过程,以检测其是否存在异常,并生成相应的异常规则,以包含在UKM的NIDS更新中。使用WireShark工具收集网络流量数据,收集时间为3天,使用了6种最常见的网络属性。实验使用了三种关联规则数据挖掘技术,即Appriori、模糊Appriori和基于2秒、5秒和10秒窗口切片的FP-Growth。在四个数据集中,数据集1和数据集2被检测到有异常。结果表明,Fuzzy Appriori算法的求解质量最好,FP-Growth算法的求解速度更快。以2秒窗口切片的形式进行预处理的数据集显示出更好的效果。本研究概述了组织可以使用关联规则数据挖掘技术捕获和检测异常的步骤,以提高NIDS的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly detection for PTM's network traffic using association rule
In order to evaluate the quality of UKM's NIDS, this paper presents the process of analyzing network traffic captured by Pusat Teknologi Maklumat (PTM) to detect whether it has any anomalies or not and to produce corresponding anomaly rules to be included in an update of UKM's NIDS. The network traffic data was collected using WireShark for three days, using the six most common network attributes. The experiment used three association rule data mining techniques known as Appriori, Fuzzy Appriori and FP-Growth based on two, five and ten second window slicing. Out of the four data-sets, data-sets one and two were detected to have anomalies. The results show that the Fuzzy Appriori algorithm presented the best quality result, while FP-Growth presented a faster time to reach a solution. The data-sets, which was pre-processed in the form of two second window slicing displayed better results. This research outlines the steps that can be utilized by an organization to capture and detect anomalies using association rule data mining techniques to enhance the quality their of NIDS.
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