一种基于小波变换的网络异常流量分类方法

Soo-Yeon Ji, C. Kamhoua, Nandi O. Leslie, D. Jeong
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引用次数: 2

摘要

由于互联网和移动设备使用的快速增长,了解网络活动已成为网络安全中最重要的任务。为了保护我们的计算基础设施和个人数据免受网络入侵者或攻击,识别异常活动至关重要。从网络流量数据中提取特征被认为是一项必不可少的任务,因为它会影响到准确识别活动的整体性能。尽管研究人员提出了几种方法,但他们主要集中在确定检测异常网络活动的最佳技术上。只有少数研究考虑使用特征提取技术。本文提出了一种利用小波变换确定综合信息特征集来识别网络异常活动的新方法。该方法不是通过属性提取特征,而是利用所有属性信息提取特征,并设计可靠的学习模型,通过减少误报来检测异常活动。两种机器学习技术,逻辑回归(LR)和朴素贝叶斯,被用来显示该方法的有效性。可视化的方法也被用来强调我们的方法。结果,我们发现我们的方法在检测异常网络活动时以更少的计算时间产生了更好的性能结果。
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An Effective Approach to Classify Abnormal Network Traffic Activities using Wavelet Transform
Understanding network activities has become the most significant task in network security due to the rapid growth of the Internet and mobile devices usages. To protect our computing infrastructures and personal data from network intruders or attacks, identifying abnormal activities is critical. Extracting features from network traffic data is considered as an essential task to be performed because it affects the overall performances to identify the activities accurately. Although researchers proposed several approaches, they mainly focused on identifying the best possible technique to detect abnormal network activities. Only a few studies considered utilizing feature extraction techniques. In this paper, we introduced a new approach, with which an integrative information feature set is determined to identify abnormal network activities using wavelet transformation. Instead of extracting features by attributes, the approach uses all attributes information to extract features and to design a reliable learning model to detect abnormal activities by reducing false positives. Two machine learning techniques, Logistic Regression (LR) and Naive Bayes, are utilized to show the effectiveness of the approach. A visualization method is also used to emphasize our approach. As a result, we found that our proposed approach produces a better performance result with less computational time in detecting abnormal network activities.
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