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Semidefinite spectral clustering

机译:半定谱聚类

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摘要

Multi-way partitioning of an undirected weighted graph where pairwise similarities are assigned as edge weights, provides an important tool for data clustering, but is an NP-hard problem. Spectral relaxation is a popular way of relaxation, leading to spectral clustering where the clustering is peformed by the eigen-decomposition of the (normalized) graph Laplacian. On the other hand, semidefinite relaxation, is an alternative way of relaxing a combinatorial optimization, leading to a convex optimization. In this paper we employ a semidefinite programming (SDP) approach to the graph equipartitioning for clustering, where sufficient conditions for strong duality hold. The method is referred to as semidefinite spectral clustering, where the clustering is based on the eigen-decomposition of the optimal feasible matrix computed by SDR Numerical experiments with several data sets, demonstrate the useful behavior of our semidefinite spectral clustering, compared to existing spectral clustering methods. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:将成对相似性指定为边缘权重的无向加权图的多路分割,为数据聚类提供了重要的工具,但这是一个NP难题。频谱弛豫是一种流行的弛豫方法,它导致频谱聚类,其中聚类由(规范化)图拉普拉斯算子的特征分解来执行。另一方面,半确定松弛是松弛组合优化的另一种方法,可导致凸优化。在本文中,我们采用半定规划(SDP)的方法对图进行均分以进行聚类,其中有足够的条件保持强对偶性。该方法称为半定谱聚类,其中该聚类基于SDR计算的最佳可行矩阵的本征分解带有多个数据集的数值实验证明了与现有谱聚类相比,半定谱聚类的有用行为方法。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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