Two subspace clustering methods with prior masks
Keywords: subspace clustering, prior mask, bilevel clustering
TL;DR: To enhance the relationship between similar points, and weaken the connection between distant points, we provide two prior masks based subspace clustering methods to improve clustering performance.
Abstract: To further utilize the unsupervised features and pairwise information, we propose an embedding method to joint two clustering methods, and an unified Bilevel Clustering Optimization (BCO) framework to improve the clustering performance. At first, we reformulate the original subspace clustering as a Basic Masked Subspace Clustering (BMSC), which reformulate the diagonal constraints to a hard mask. Then, we provide a General Masked Subspace Clustering (GMSC) method to integrate different clustering via a soft mask. Furthermore, based on BCO and GMSC, we induce a learnable soft mask and design a Recursive Masked Subspace Clustering (RMSC) method that can alternately update the affinity matrix and the soft mask. Numerical experiments show that our models obtain significant improvement compared with the baselines on several commonly used datasets, such as MNIST, USPS, ORL, COIL20 and COIL100.
Primary Area: unsupervised, self-supervised, semi-supervised, and supervised representation learning
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Submission Number: 9100
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