35

Weighed 1\ell_1 on the simplex: Compressive sensing meets locality

Symposium on Software Performance (SP), 2021
Abstract

Sparse manifold learning algorithms combine techniques in manifold learning and sparse optimization to learn features that could be utilized for downstream tasks. The standard setting of compressive sensing can not be immediately applied to this setup. Due to the intrinsic geometric structure of data, dictionary atoms might be redundant and do not satisfy the restricted isometry property or coherence condition. In addition, manifold learning emphasizes learning local geometry which is not reflected in a standard 1\ell_1 minimization problem. We propose weighted 0\ell_0 and weighted 1\ell_1 metrics that encourage representation via neighborhood atoms suited for dictionary based manifold learning. Assuming that the data is generated from Delaunay triangulation, we show the equivalence of weighted 1\ell_1 and weighted 0\ell_0. We discuss an optimization program that learns the dictionaries and sparse coefficients and demonstrate the utility of our regularization on synthetic and real datasets.

View on arXiv
Comments on this paper