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Non-negative Local Sparse Coding for Subspace Clustering

机译:子空间聚类的非负局部稀疏编码

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Subspace sparse coding (SSC) algorithms have proven to be beneficial to the clustering problems. They provide an alternative data representation in which the underlying structure of the clusters can be better captured. However, most of the research in this area is mainly focused on enhancing the sparse coding part of the problem. In contrast, we introduce a novel objective term in our proposed SSC framework which focuses on the separability of data points in the coding space. We also provide mathematical insights into how this local-separability term improves the clustering result of the SSC framework. Our proposed non-linear local SSC algorithm (NLSSC) also benefits from the efficient choice of its sparsity terms and constraints. The NLSSC algorithm is also formulated in the kernel-based framework (NLKSSC) which can represent the nonlinear structure of data. In addition, we address the possibility of having redundancies in sparse coding results and its negative effect on graph-based clustering problems. We introduce the link-restore post-processing step to improve the representation graph of non-negative SSC algorithms such as ours. Empirical evaluations on well-known clustering benchmarks show that our proposed NLSSC framework results in better clusterings compared to the state-of-the-art baselines and demonstrate the effectiveness of the link-restore post-processing in improving the clustering accuracy via correcting the broken links of the representation graph.
机译:子空间稀疏编码(SSC)算法已被证明对聚类问题有益。它们提供了另一种数据表示形式,可以更好地捕获群集的基础结构。但是,该领域的大多数研究主要集中在增强问题的稀疏编码部分上。相反,我们在我们提出的SSC框架中引入了一个新颖的客观术语,该术语着眼于编码空间中数据点的可分离性。我们还提供了有关此局部可分性术语如何改善SSC框架的聚类结果的数学见解。我们提出的非线性局部SSC算法(NLSSC)也受益于稀疏项和约束的有效选择。 NLSSC算法也在基于内核的框架(NLKSSC)中制定,可以表示数据的非线性结构。此外,我们解决了稀疏编码结果中存在冗余的可能性及其对基于图的聚类问题的负面影响。我们引入了链接恢复后处理步骤,以改进非负SSC算法(例如我们的算法)的表示图。对众所周知的聚类基准进行的经验评估表明,与最新的基准相比,我们提出的NLSSC框架可产生更好的聚类,并证明了链接恢复后处理在通过纠正中断来改善聚类准确性方面的有效性。表示图的链接。

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