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Hierarchical trie packet classification algorithm based on expectation-maximization clustering

机译:基于期望最大化聚类的三叉树分类算法

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摘要

With the development of computer network bandwidth, packet classification algorithms which are able to deal with large-scale rule sets are in urgent need. Among the existing algorithms, researches on packet classification algorithms based on hierarchical trie have become an important packet classification research branch because of their widely practical use. Although hierarchical trie is beneficial to save large storage space, it has several shortcomings such as the existence of backtracking and empty nodes. This paper proposes a new packet classification algorithm, Hierarchical Trie Algorithm Based on Expectation-Maximization Clustering (HTEMC). Firstly, this paper uses the formalization method to deal with the packet classification problem by means of mapping the rules and data packets into a two-dimensional space. Secondly, this paper uses expectation-maximization algorithm to cluster the rules based on their aggregate characteristics, and thereby diversified clusters are formed. Thirdly, this paper proposes a hierarchical trie based on the results of expectation-maximization clustering. Finally, this paper respectively conducts simulation experiments and real-environment experiments to compare the performances of our algorithm with other typical algorithms, and analyzes the results of the experiments. The hierarchical trie structure in our algorithm not only adopts trie path compression to eliminate backtracking, but also solves the problem of low efficiency of trie updates, which greatly improves the performance of the algorithm.
机译:随着计算机网络带宽的发展,迫切需要能够处理大规模规则集的分组分类算法。在现有的算法中,基于层次树的分组分类算法的研究由于其广泛的实际应用而成为重要的分组分类研究分支。尽管分层Trie有助于节省大量存储空间,但它也存在一些缺点,例如存在回溯和空节点。本文提出了一种新的分组分类算法,即基于期望最大化聚类的分层特里算法。首先,本文采用形式化方法,通过将规则和数据包映射到二维空间中来处理包分类问题。其次,本文采用期望最大化算法根据规则的集合特征对规则进行聚类,从而形成了多样化的聚类。第三,本文基于期望最大化聚类的结果提出了一种层次化的特里。最后,本文分别进行了仿真实验和真实环境实验,比较了我们的算法与其他典型算法的性能,并分析了实验结果。该算法的分层特里结构不仅采用特里路径压缩来消除回溯,而且解决了特里更新效率低的问题,大大提高了算法的性能。

著录项

  • 期刊名称 PLoS Clinical Trials
  • 作者

    Xia-an Bi; Junxia Zhao;

  • 作者单位
  • 年(卷),期 2011(12),7
  • 年度 2011
  • 页码 e0181049
  • 总页数 19
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

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