基于差分进化的阈值岭回归子空间聚类

Ankur Kulhari, M. Saraswat
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引用次数: 1

摘要

一种鲁棒子空间聚类方法为具有多个低维线性子空间集合的噪声高维数据集中的每个数据点分配一个标签。为了减少数据集中噪声对子空间聚类的影响,人们提出了许多方法,如基于稀疏表示的方法、基于低秩表示的方法和阈值岭回归方法。这些方法要么减少输入空间(稀疏表示和低秩表示)中的噪声,要么减少投影空间(阈值岭回归)中的噪声。然而,在投影空间中减少噪声消除了误差的约束和误差结构的先验知识。阈值岭回归法采用k-means算法进行聚类,对初始质心敏感,容易陷入局部最优。为此,本文提出了一种基于改进阈值脊回归的子空间聚类方法,该方法采用差分进化和k-means算法。将该方法与人脸图像数据集上的阈值脊回归等六种方法进行了比较。实验结果表明,该方法在准确率和归一化互信息方面优于现有算法。
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Differential evolution-based subspace clustering via thresholding ridge regression
A robust subspace clustering assigns a label to each data point in a noisy and high dimensional dataset which has a collection of multiple linear subspaces of low dimension. To reduce the effect of noise in the dataset for subspace clustering, many methods have been proposed such as sparse representationbased, low rank representation-based, and thresholding ridge regression methods. These methods either reduce the noise in the input space (sparse representation and low rank representation) or in the projection space (thresholding ridge regression). However, reduction of noise in the projection space eliminates the constraints of spars errors and a prior knowledge of structure of errors. Further, thresholding ridge regression method uses k-means algorithm for clustering which is sensitive to initial centroids and may stuck into local optimum. Therefore, this paper introduces a modified thresholding ridge regression-based subspace clustering method which uses differential evolution and k-means algorithm. The proposed method has been compared with six different methods including thresholding ridge regression on facial image dataset. The experimental results show that the proposed method outperforms the existing algorithms in terms of accuracy and normalized mutual information.
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