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Group-Sparse Model Selection: Hardness and Relaxations
2016
IEEE Transactions on Information Theory
Group-based sparsity models are instrumental in linear and non-linear regression problems. The main premise of these models is the recovery of "interpretable" signals through the identification of their constituent groups, which can also provably translate in substantial savings in the number of measurements for linear models in compressive sensing. In this paper, we establish a combinatorial framework for group-model selection problems and highlight the underlying tractability issues. In
doi:10.1109/tit.2016.2602222
fatcat:camcd2qxpjezjo53zhdybz6m3m