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Neighbor number, valley seeking and clustering

机译:邻居数,谷值搜索和聚类

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This paper proposes a novel nonparametric clustering algorithm capable of identifying shape-free clusters. This algorithm is based on a nonparametric estimation of the normalized density derivative (NDD) and the local convexity of the density distribution function, both of which are represented in a very concise form in terms of neighbor numbers. We use NDD to measure the dissimilarity between each pair of observations in a local neighborhood and to build a connectivity graph. Combined with the local convexity, this similarity measure can detect observations in local minima (valleys) of the density function, which separate observations in different major clusters. We demonstrate that this algorithm has a close relationship with the single-linkage hierarchical clustering and can be viewed as its extension. The performance of the algorithm is tested with both synthetic and real datasets. An example of color image segmentation is also given. Comparisons with several representative existing algorithms show that the proposed method can robustly identify major clusters even when there are complex configurations and/or large overlaps.
机译:本文提出了一种新颖的非参数聚类算法,能够识别无形状的聚类。该算法基于归一化密度导数(NDD)和密度分布函数的局部凸率的非参数估计,这两个参数都以非常简洁的形式用邻居数表示。我们使用NDD来测量本地邻域中每对观测值之间的差异,并建立连通性图。结合局部凸度,这种相似性度量可以检测密度函数的局部极小值(谷)中的观测值,从而将不同主要群集中的观测值分开。我们证明了该算法与单链接层次聚类密切相关,可以看作是它的扩展。使用合成数据集和真实数据集测试算法的性能。还给出了彩色图像分割的示例。与几种代表性现有算法的比较表明,即使存在复杂的配置和/或较大的重叠,所提出的方法也可以可靠地识别主要聚类。

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