A survey of classification algorithms for network traffic

R. Deebalakshmi, V. Jyothi
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引用次数: 5

Abstract

Network traffic in the world wide is calculated to rise every year twice the times. To keep pace and profit from this increased amount of flows efficiently. And offer new services. Some efficient techniques needed. Day by day new applications are invented and they have heterogeneous nature in network environment and communication between these new devices also a critical part. improving the network performance, establish proper service policies in router, handling network security risks, management of network operations and provide Qos services to users in internet. To solve these issues classification techniques are used. In this survey different classification algorithms are discussed. K-means algorithm, classification using clustering algorithm, Classification based on Fuzzy Kernel K-means Clustering, Support vector machine algorithm, and self-learning classifier Bayesian classification, C5.0 and traffic classification using correlation information and robust network traffic algorithms are presented.
网络流量分类算法综述
据估计,全世界的网络流量每年增长两倍。为了跟上步伐并有效地从增加的流量中获利。并提供新的服务。需要一些有效的技术。在网络环境中,新的应用程序层出不穷,它们具有异构性,而这些新设备之间的通信也是至关重要的一部分。提高网络性能,在路由器上制定适当的业务策略,处理网络安全风险,管理网络运营,为互联网用户提供Qos服务。为了解决这些问题,使用了分类技术。本文讨论了不同的分类算法。介绍了K-means算法、基于聚类的分类算法、基于模糊核K-means聚类的分类算法、支持向量机算法、自学习分类器贝叶斯分类、C5.0以及基于相关信息的流量分类和鲁棒网络流量算法。
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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