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Spectral Clustering Algorithm Based on Local Sparse Representation

机译:基于局部稀疏表示的谱聚类算法

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Clustering based on sparse representation is an important technique in machine learning and data mining fields. However, it is time-consuming because it constructs l_1-graph by solving l_1-minimization with all other samples as dictionary for each sample. This paper is focused on improving the efficiency of clustering based on sparse representation. Specifically, the Spectral Clustering Algorithm Based on Local Sparse Representation (SCAL) is proposed. For a given sample the algorithm solves l_1-minimization with the local k nearest neighborhood as dictionary, constructs the similarity matrix by calculating sparsity induced similarity (SIS) of the sparse coefficients solution, and then uses spectral clustering with the similarity matrix to cluster the samples. Experiments using face recognition data sets ORL and Extended Yale B demonstrate that the proposed SCAL can get better clustering performance and less time consumption.
机译:基于稀疏表示的聚类是机器学习和数据挖掘领域中的一项重要技术。但是,这很耗时,因为它通过将所有其他样本的l_1最小化作为每个样本的字典来构造l_1图。本文着重于提高基于稀疏表示的聚类效率。具体而言,提出了一种基于局部稀疏表示的谱聚类算法。对于给定的样本,该算法使用局部k最近邻作为字典求解l_1最小化,通过计算稀疏系数解的稀疏诱导相似度(SIS)构造相似度矩阵,然后使用具有相似度矩阵的频谱聚类对样本进行聚类。使用人脸识别数据集ORL和Extended Yale B进行的实验表明,所提出的SCAL可以获得更好的聚类性能和更少的时间消耗。

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