聚类分析
光谱聚类
超度量空间
相关聚类
邻接表
离群值
计算机科学
CURE数据聚类算法
算法
数学
稳健性(进化)
k-中位数聚类
树冠聚类算法
单连锁聚类
度量空间
人工智能
离散数学
生物化学
化学
基因
作者
Anna Little,Mauro Maggioni,James M. Murphy
摘要
We consider the problem of clustering with the longest-leg path distance (LLPD) metric, which is informative for elongated and irregularly shaped clusters. We prove finite-sample guarantees on the performance of clustering with respect to this metric when random samples are drawn from multiple intrinsically low-dimensional clusters in high-dimensional space, in the presence of a large number of high-dimensional outliers. By combining these results with spectral clustering with respect to LLPD, we provide conditions under which the Laplacian eigengap statistic correctly determines the number of clusters for a large class of data sets, and prove guarantees on the labeling accuracy of the proposed algorithm. Our methods are quite general and provide performance guarantees for spectral clustering with any ultrametric. We also introduce an efficient, easy to implement approximation algorithm for the LLPD based on a multiscale analysis of adjacency graphs, which allows for the runtime of LLPD spectral clustering to be quasilinear in the number of data points.
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