学习非负半空间聚类

Kangheng Hu, Jinyu Tian, Yuanyan Tang
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引用次数: 0

摘要

通过揭示样本的非负半空间结构,提出了一种新的聚类算法——非负半空间聚类(NHC)。这个半空间是一些几乎独立的半空间的并,每一类样本都受这个半空间支配。由于没有对样本施加子空间无关假设,因此与其他子空间聚类方法(如稀疏空间聚类)相比,NHC对于类数量的增加具有鲁棒性。在获得半空间结构后,邻接图几乎是逐块的,并且可以通过一些切割技术很好地分组。在实验部分,我们在CBCL和Reuters-21578两个数据库上实现了NHC和其他竞争算法。结果表明,NHC算法在两种数据库上的性能均优于SSC算法,鲁棒性优于SSC算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering by Learning the Non-Negative Half-Space
This paper proposes a novel clustering algorithm which is called Non-negative Half-space Clustering (NHC), by revealing the nonnegative half-space structure of samples. The half-space is the union of some nearly independent half-spaces, and each class of samples is dominated by this half-space. Since the subspace independent assumption is not imposed on the samples, NHC is robust for the increasing of number of classes compared with other subspace clustering methods such as Sparse Space Clustering. After obtaining a half-space structure, the adjacency graph is almost block-wise, and can be well grouped by some cutting techniques. In the experiment section, we implement NHC and other competitive algorithms on two database CBCL and Reuters-21578. The result shows that NHC performs better on the two database, and more robust than SSC.
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