基于PCA的共享拥塞路径检测

Lidong Yu, Chang-you Xing, Huali Bai, Ming Chen, Mingwei Xu
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引用次数: 1

摘要

大多数现有的检测共享拥塞路径的技术都是基于具有公共源或目的点的路径的成对比较。很难将它们扩展到具有不同源和目的地的集群路径。本文提出了一种基于PCA的可扩展的共享拥塞路径聚类方法。该算法基于主成分分析中的因子加载矩阵,将每条路径的时延测量数据映射到一个新的低维空间中的点上,该矩阵反映了路径之间的相关性。在这个新空间中,如果相应的路径共享拥塞,则点彼此靠近。然后,对这些点进行聚类分析,以准确识别共享拥塞路径。通过NS2仿真对该算法进行了验证。结果表明,该算法具有较高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting shared congestion paths based on PCA
Most existing techniques detecting shared congestion paths are based on pair-wise comparison of paths with a common source or destination point. It is difficult to extend them to cluster paths with different sources and destinations. In this paper, we propose a scalable approach to cluster shared congestion paths based on PCA. This algorithm maps the delay measurement data of each path into a point in a new, low-dimensional space based on the factor loading matrix in PCA, which reflect correlation between paths. In this new space, points are close to each other if the corresponding paths share congestion. Then, the clustering analysis is applied to these points so as to identify shared congestion paths accurately. This algorithm is evaluated by NS2 simulations. The results show us that this algorithm has high accuracy.
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