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Unsupervised clustering under the Union of Polyhedral Cones (UOPC) model

机译:多面锥体联合(UOPC)模型下的无监督聚类

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摘要

In this paper, we consider clustering data that is assumed to come from a union of finitely many pointed convex polyhedral cones. This model is referred to as the Union of Polyhedral Cones (UOPC) model. Similar to the Union of Subspaces (UOS) model where each data from each subspace is generated from a (unknown) basis, in the UOPC model each data from each cone is assumed to be generated from a finite number of (unknown) extreme rays. To cluster data under this model, we first build an affinity graph with the different edge weights where the edge weights are derived using a K-nearest neighbor (KNN) algorithm. Subsequently, spectral clustering is applied to obtain the clusters, and the proposed algorithm is denoted as KNN-SC. We show that on average KNN-SC outperforms Sparse Subspace Clustering by Non-negative constraints Lasso (NCL), Least squares approximation (LSA), Sparse Subspace Clustering (SSC), robust Subspace Clustering via Thresholding (TSC), and Mutual KNN based Spectral Clustering (KNNM-SC), and we provide deterministic conditions for correct clustering using KNN-SC. We show that on average KNN-SC outperforms NCL, LSA, SSC, TSC, and KNNM-SC, and we provide deterministic conditions for correct clustering using KNN-SC. For an affinity measure between the cones it is shown that as long as the cones are not very coherent and as long as the density of data within each cone exceeds a threshold, KNN-SC leads to accurate clustering. Finally, simulation results on real datasets (MNIST and CMU Motion datasets) depict that the proposed algorithm works well on real data indicating the utility of the UOPC model and the proposed algorithm. (C) 2017 Elsevier B.V. All rights reserved.
机译:在本文中,我们考虑了聚类数据,这些数据假定来自有限个尖的凸多面体圆锥的并集。该模型称为多面体圆锥体联合(UOPC)模型。类似于子空间联合(UOS)模型,其中每个子空间的每个数据都是基于(未知)基础生成的,在UOPC模型中,每个圆锥体的每个数据都假定是由有限数量的(未知)极端射线生成的。为了在该模型下对数据进行聚类,我们首先使用不同的边缘权重构建一个亲和度图,其中使用K最近邻(KNN)算法得出边缘权重。随后,应用频谱聚类获得聚类,并将所提出的算法称为KNN-SC。我们显示,平均而言,KNN-SC的性能优于非负约束套索(NCL),最小二乘近似(LSA),稀疏子空间聚类(SSC),通过阈值(TSC)的鲁棒子空间聚类和基于KNN互谱的稀疏子空间聚类聚类(KNNM-SC),我们提供了使用KNN-SC进行正确聚类的确定性条件。我们显示,平均而言,KNN-SC优于NCL,LSA,SSC,TSC和KNNM-SC,并且我们提供了使用KNN-SC进行正确聚类的确定性条件。对于视锥之间的亲和力度量,表明,只要视锥不是非常一致,并且只要每个视锥内的数据密度超过阈值,KNN-SC就会导致准确的聚类。最后,对真实数据集(MNIST和CMU Motion数据集)的仿真结果表明,所提出的算法在真实数据上运行良好,表明UOPC模型和所提出算法的实用性。 (C)2017 Elsevier B.V.保留所有权利。

著录项

  • 来源
    《Pattern recognition letters》 |2017年第1期|104-109|共6页
  • 作者单位

    Purdue Univ, Sch Ind Engn, W Lafayette, IN 47907 USA;

    Purdue Univ, Sch Ind Engn, W Lafayette, IN 47907 USA;

    Tufts Univ, Dept Elect & Comp Engn, Medford, MA 02155 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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