LGITMLMar 13, 2013

Group-Sparse Model Selection: Hardness and Relaxations

arXiv:1303.3207v436 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of interpretable signal recovery in compressive sensing for researchers and practitioners, though it is incremental as it builds on existing group-sparsity models.

The paper tackles the group-model selection problem in linear regression, showing it is NP-hard and equivalent to the weighted maximum coverage problem, while identifying specific group structures that allow polynomial-time solutions via dynamic programming and convex relaxations.

Group-based sparsity models are proven instrumental in linear regression problems for recovering signals from much fewer measurements than standard compressive sensing. The main promise of these models is the recovery of "interpretable" signals through the identification of their constituent groups. In this paper, we establish a combinatorial framework for group-model selection problems and highlight the underlying tractability issues. In particular, we show that the group-model selection problem is equivalent to the well-known NP-hard weighted maximum coverage problem (WMC). Leveraging a graph-based understanding of group models, we describe group structures which enable correct model selection in polynomial time via dynamic programming. Furthermore, group structures that lead to totally unimodular constraints have tractable discrete as well as convex relaxations. We also present a generalization of the group-model that allows for within group sparsity, which can be used to model hierarchical sparsity. Finally, we study the Pareto frontier of group-sparse approximations for two tractable models, among which the tree sparsity model, and illustrate selection and computation trade-offs between our framework and the existing convex relaxations.

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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