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Multidimensional packet classification with improved cutting

机译:多维数据包分类,切割效果更好

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Packet classification based on decision tree are easy to implement and widely employed in high-speed packet classification. The basic objective of building a decision tree is minimal storage and time complexity. HyperIC is a multiple dimensional packet classification algorithm. It is an improved HyperCuts algorithm based on statistics and evaluation on filter sets. The proposed algorithm allows the tradeoff between storage and throughput during creating decision tree. It is suitable for IPv6 packet classification as well as IPv4 because it is not sensitive to length of IP address. The algorithm applies a natural and performance-estimated decision-making process. We define maximum storage occupied and then achieve the best throughput. Evaluation shows that HyperIC provides a great improvement over HiCuts and HyperCuts algorithm in both storage requirement and searching performance and scalable to large filter sets.
机译:基于决策树的数据包分类易于实现,并在高速数据包分类中得到了广泛的应用。构建决策树的基本目标是最小化存储和时间复杂度。 HyperIC是多维数据包分类算法。这是一种改进的HyperCuts算法,它基于统计信息和对过滤器集的评估。所提出的算法允许在创建决策树期间在存储和吞吐量之间进行折衷。由于它对IP地址的长度不敏感,因此它既适用于IPv6数据包分类也适用于IPv6。该算法应用了自然且性能估计的决策过程。我们定义占用的最大存储空间,然后实现最佳吞吐量。评估表明,HyperIC在存储需求和搜索性能方面都比HiCuts和HyperCuts算法有了很大的改进,并且可扩展到大型过滤器集。

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