C-HiLasso: A Collaborative Hierarchical Sparse Modeling Framework
Pablo Sprechmann, Ignacio Ram\'irez, Guillermo Sapiro, Yonina Eldar

TL;DR
This paper introduces C-HiLasso, a hierarchical sparse modeling framework that combines individual and group sparsity for collaborative signal coding, with proven optimization and recovery guarantees.
Contribution
It extends hierarchical sparse modeling to collaborative scenarios, enabling shared group sparsity patterns among multiple signals with an efficient optimization method.
Findings
Effective modeling of shared group sparsity in collaborative signals
Guaranteed convergence of the optimization algorithm
Theoretical recovery guarantees for the proposed models
Abstract
Sparse modeling is a powerful framework for data analysis and processing. Traditionally, encoding in this framework is performed by solving an L1-regularized linear regression problem, commonly referred to as Lasso or Basis Pursuit. In this work we combine the sparsity-inducing property of the Lasso model at the individual feature level, with the block-sparsity property of the Group Lasso model, where sparse groups of features are jointly encoded, obtaining a sparsity pattern hierarchically structured. This results in the Hierarchical Lasso (HiLasso), which shows important practical modeling advantages. We then extend this approach to the collaborative case, where a set of simultaneously coded signals share the same sparsity pattern at the higher (group) level, but not necessarily at the lower (inside the group) level, obtaining the collaborative HiLasso model (C-HiLasso). Such signals…
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