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Using Ripley's K-function to improve graph-based clustering techniques

机译:使用Ripley的K函数改进基于图的聚类技术

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The success of any graph-based clustering algorithm depends heavily on the quality of the similarity matrix being clustered, which is itself highly dependent on point-wise scaling parameters. We propose a novel technique for finding point-wise scaling parameters based on Ripley's K-function [12] which enables data clustering at different density scales within the same dataset. Additionally, we provide a method for enhancing the spatial similarity matrix by including a density metric between neighborhoods. We show how our proposed methods for building similarity matrices can improve the results attained by traditional approaches for several well known clustering algorithms on a variety of datasets.
机译:任何基于图的聚类算法的成功在很大程度上取决于要聚类的相似性矩阵的质量,而该相似性矩阵本身高度依赖于逐点缩放参数。我们提出了一种基于Ripley的K函数[12]来查找逐点缩放参数的新技术,该技术可以在同一数据集中以不同的密度尺度进行数据聚类。此外,我们提供了一种通过在邻域之间包含密度度量来增强空间相似度矩阵的方法。我们展示了我们提出的用于构建相似性矩阵的方法如何改善传统方法在各种数据集上针对几种众所周知的聚类算法所获得的结果。

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