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Article Dans Une Revue Journal of Statistical Planning and Inference Année : 2013

Grouping strategies and thresholding for high dimensional linear models

Résumé

The estimation problem in a high regression model with structured sparsity is investigated. An algorithm using a two-step block thresholding procedure called GR-LOL is provided. Convergence rates are produced: they depend on simple coherence-type indices of the Gram matrix - easily checkable on the data - as well as sparsity assumptions of the model parameters measured by a combination of within-blocks with l(q), q < 1 between-blocks norms. The simplicity of the coherence indicator suggests ways to optimize the rates of convergence when the group structure is not naturally given by the problem or is unknown. In such a case, an auto-driven procedure is provided to determine the regressor groups (number and contents). An intensive practical study compares our grouping methods with the standard LOL algorithm. We prove that the grouping rarely deteriorates the results but can improve them very significantly. GR-LOL is also compared with group-Lasso procedures and exhibits a very encouraging behavior. The results are quite impressive, especially when GR-LOL algorithm is combined with a grouping pre-processing.

Dates et versions

hal-01025810 , version 1 (18-07-2014)

Identifiants

Citer

M. Mougeot, D. Picard, K. Tribouley. Grouping strategies and thresholding for high dimensional linear models. Journal of Statistical Planning and Inference, 2013, 143 (9), pp.1417-1438. ⟨10.1016/j.jspi.2013.03.001⟩. ⟨hal-01025810⟩
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