CVNov 21, 2015

Convex Sparse Spectral Clustering: Single-view to Multi-view

arXiv:1511.06860v3188 citations
Originality Incremental advance
AI Analysis

This work addresses computational bottlenecks in spectral clustering for data analysis, though it appears incremental as it builds on existing sparse regularization approaches.

The authors tackled the computational inefficiency of nonconvex sparse spectral clustering by proposing a convex relaxation method, achieving improved clustering performance on real-world datasets.

Spectral Clustering (SC) is one of the most widely used methods for data clustering. It first finds a low-dimensonal embedding $U$ of data by computing the eigenvectors of the normalized Laplacian matrix, and then performs k-means on $U^\top$ to get the final clustering result. In this work, we observe that, in the ideal case, $UU^\top$ should be block diagonal and thus sparse. Therefore we propose the Sparse Spectral Clustering (SSC) method which extends SC with sparse regularization on $UU^\top$. To address the computational issue of the nonconvex SSC model, we propose a novel convex relaxation of SSC based on the convex hull of the fixed rank projection matrices. Then the convex SSC model can be efficiently solved by the Alternating Direction Method of \canyi{Multipliers} (ADMM). Furthermore, we propose the Pairwise Sparse Spectral Clustering (PSSC) which extends SSC to boost the clustering performance by using the multi-view information of data. Experimental comparisons with several baselines on real-world datasets testify to the efficacy of our proposed methods.

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