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Provable Subspace Clustering: When LRR meets SSC

机译:可提供的子空间聚类:当LRR符合SSC时

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Sparse Subspace Clustering (SSC) and Low-Rank Representation (LRR) are both considered as the state-of-the-art methods for subspace clustering. The two methods are fundamentally similar in that both are convex optimizations exploiting the intuition of "Self-Expressiveness". The main difference is that SSC minimizes the vector ?_1 norm of the representation matrix to induce sparsity while LRR minimizes nuclear norm (aka trace norm) to promote a low-rank structure. Because the representation matrix is often simultaneously sparse and low-rank, we propose a new algorithm, termed Low-Rank Sparse Subspace Clustering (LRSSC), by combining SSC and LRR, and develops theoretical guarantees of when the algorithm succeeds. The results reveal interesting insights into the strength and weakness of SSC and LRR and demonstrate how LRSSC can take the advantages of both methods in preserving the "Self-Expressiveness Property" and "Graph Connectivity" at the same time.
机译:稀疏子空间聚类(SSC)和低秩表示(LRR)都被视为子空间聚类的最先进方法。这两种方法从根本上类似,这两种都是凸优化利用“自我表现力”的直觉。主要区别在于,SSC最小化表示矩阵的载体_1标准,以引起稀疏性,而LRR最小化核规范(AKA痕量规范)以促进低秩结构。由于表示矩阵通常同时稀疏和低等级,因此通过组合SSC和LRR,提出了一种新的算法,称为低级稀疏子空间聚类(LRSSC),并开发算法成功时的理论保证。结果揭示了SSC和LRR的实力和弱点的有趣见解,并展示了LRSSC如何同时保留“自效属性”和“图形连接”的方法。

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