Locality Regularized Reconstruction: Structured Sparsity and Delaunay Triangulations
Marshall Mueller, James M. Murphy, Abiy Tasissa

TL;DR
This paper introduces a locality regularization method for linear reconstruction that leverages Delaunay triangulations to produce structured, sparse solutions with theoretical bounds on sparsity and support, applicable in high-dimensional data analysis.
Contribution
The work provides a novel locality regularization framework that guarantees sparse solutions supported on Delaunay simplices, with theoretical bounds and efficient algorithms for structured linear reconstruction.
Findings
Optimal coefficients are bounded by d+1 non-zero entries.
Support of solutions corresponds to vertices of Delaunay simplices.
Method achieves comparable computational efficiency to existing Delaunay-based approaches.
Abstract
Linear representation learning is widely studied due to its conceptual simplicity and empirical utility in tasks such as compression, classification, and feature extraction. Given a set of points and a vector , the goal is to find coefficients so that , subject to some desired structure on . In this work we seek that forms a local reconstruction of by solving a regularized least squares regression problem. We obtain local solutions through a locality function that promotes the use of columns of that are close to when used as a regularization term. We prove that, for all levels of regularization and under a mild condition that the…
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Taxonomy
TopicsAdvanced Numerical Analysis Techniques · Medical Imaging Techniques and Applications · Numerical methods in inverse problems
MethodsSparse Evolutionary Training
