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Sharp oracle inequalities for low-complexity priors

Author

Listed:
  • Tung Duy Luu

    (Normandie Univ)

  • Jalal Fadili

    (Normandie Univ)

  • Christophe Chesneau

    (Normandie Univ, Université de Caen Normandie)

Abstract

In this paper, we consider a high-dimensional statistical estimation problem in which the number of parameters is comparable or larger than the sample size. We present a unified analysis of the performance guarantees of exponential weighted aggregation and penalized estimators with a general class of data losses and priors which encourage objects which conform to some notion of simplicity/complexity. More precisely, we show that these two estimators satisfy sharp oracle inequalities for prediction ensuring their good theoretical performances. We also highlight the differences between them. When the noise is random, we provide oracle inequalities in probability using concentration inequalities. These results are then applied to several instances including the Lasso, the group Lasso, their analysis-type counterparts, the $$\ell _\infty $$ℓ∞ and the nuclear norm penalties. All our estimators can be efficiently implemented using proximal splitting algorithms.

Suggested Citation

  • Tung Duy Luu & Jalal Fadili & Christophe Chesneau, 2020. "Sharp oracle inequalities for low-complexity priors," Annals of the Institute of Statistical Mathematics, Springer;The Institute of Statistical Mathematics, vol. 72(2), pages 353-397, April.
  • Handle: RePEc:spr:aistmt:v:72:y:2020:i:2:d:10.1007_s10463-018-0693-6
    DOI: 10.1007/s10463-018-0693-6
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    References listed on IDEAS

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