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Penalized deep neural networks estimator with general loss functions under weak dependence

Abstract

This paper carries out sparse-penalized deep neural networks predictors for learning weakly dependent processes, with a broad class of loss functions. We deal with a general framework that includes, regression estimation, classification, times series prediction, \cdots The ψ\psi-weak dependence structure is considered, and for the specific case of bounded observations, θ\theta_\infty-coefficients are also used. In this case of θ\theta_\infty-weakly dependent, a non asymptotic generalization bound within the class of deep neural networks predictors is provided. For learning both ψ\psi and θ\theta_\infty-weakly dependent processes, oracle inequalities for the excess risk of the sparse-penalized deep neural networks estimators are established. When the target function is sufficiently smooth, the convergence rate of these excess risk is close to O(n1/3)\mathcal{O}(n^{-1/3}). Some simulation results are provided, and application to the forecast of the particulate matter in the Vit\'{o}ria metropolitan area is also considered.

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