遗传优化和分层聚类在加密流量识别中的应用

C. Bacquet, A. N. Zincir-Heywood, M. Heywood
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引用次数: 31

摘要

网络管理的一个重要部分需要对网络流量进行准确的识别和分类,以便做出有关带宽管理、服务质量和安全性的决策。这项工作探索了将多目标遗传算法(MOGA)用于特征选择和聚类计数优化,以及应用于加密流量识别的无监督机器学习技术K-Means。具体而言,采用了分层K-Means算法,并将其性能与非分层(扁平)K-Means算法的MOGA进行了比较。后者已经与文献中发现的常见无监督技术进行了基准测试,结果支持提出的MOGA。本文的目的是探讨通过第二层聚类来提高所提出模型中的聚类纯度所获得的增益。在本文中,选择SSH作为加密应用程序的示例。然而,没有什么可以阻止所建议的模型与其他类型的加密流量一起工作,例如SSL或Skype。结果表明,采用分层MOGA后,系统的分类性能有了明显提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic optimization and hierarchical clustering applied to encrypted traffic identification
An important part of network management requires the accurate identification and classification of network traffic for decisions regarding bandwidth management, quality of service, and security. This work explores the use of a Multi-Objective Genetic Algorithm (MOGA) for both, feature selection and cluster count optimization, for an unsupervised machine learning technique, K-Means, applied to encrypted traffic identification. Specifically, a hierarchical K-Means algorithm is employed, comparing its performance to the MOGA with a non-hierarchical (flat) K-Means algorithm. The latter has already been benchmarked against common unsupervised techniques found in the literature, where results have favored the proposed MOGA. The purpose of this paper is to explore the gains, if any, obtained by increasing cluster purity in the proposed model by means of a second layer of clusters. In this work, SSH is chosen as an example of an encrypted application. However, nothing prevents the proposed model to work with other types of encrypted traffic, such as SSL or Skype. Results show that with the hierarchical MOGA, significant gains are observed in terms of the classification performance of the system.
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