聚类分析
CURE数据聚类算法
相关聚类
计算机科学
树冠聚类算法
数据流聚类
模糊聚类
光谱聚类
单连锁聚类
边距(机器学习)
数据挖掘
高维数据聚类
k-中位数聚类
失真(音乐)
算法
模式识别(心理学)
人工智能
机器学习
计算机网络
放大器
带宽(计算)
作者
Donghui Yan,Ling Huang,Michael I. Jordan
标识
DOI:10.1145/1557019.1557118
摘要
Spectral clustering refers to a flexible class of clustering procedures that can produce high-quality clusterings on small data sets but which has limited applicability to large-scale problems due to its computational complexity of O(n3) in general, with n the number of data points. We extend the range of spectral clustering by developing a general framework for fast approximate spectral clustering in which a distortion-minimizing local transformation is first applied to the data. This framework is based on a theoretical analysis that provides a statistical characterization of the effect of local distortion on the mis-clustering rate. We develop two concrete instances of our general framework, one based on local k-means clustering (KASP) and one based on random projection trees (RASP). Extensive experiments show that these algorithms can achieve significant speedups with little degradation in clustering accuracy. Specifically, our algorithms outperform k-means by a large margin in terms of accuracy, and run several times faster than approximate spectral clustering based on the Nystrom method, with comparable accuracy and significantly smaller memory footprint. Remarkably, our algorithms make it possible for a single machine to spectral cluster data sets with a million observations within several minutes.
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