Penalized estimation methods for diffusion processes and dependent data have recently gained significant attention due to their effectiveness in handling stochastic systems. In this work, we introduce an adaptive Elastic-Net estimator for ergodic diffusion processes observed under high-frequency sampling schemes. Our method combines the least squares approximation of the quasi-likelihood with adaptive l1 and l2 regularization. This approach allows to enhance prediction accuracy and interpretability while effectively recovering the sparse underlying structure of the model. In the spirit of recent research trends, we provide finite-sample guarantees for the (block-diagonal) estimator’s performance by deriving high-probability non-asymptotic bounds for the l2 estimation error. These results complement the established oracle properties in the high-frequency asymptotic regime with mixed convergence rates, ensuring consistent selection of the relevant interactions and achieving optimal rates of convergence. Furthermore, we utilize our results to analyze one-step-ahead predictions, offering non-asymptotic control over the l1 prediction error. The performance of our method is evaluated through simulations and real data applications, demonstrating its effectiveness, particularly in scenarios with strongly correlated variables.

Adaptive Elastic-Net estimation for sparse diffusion processes / De Gregorio, Alessandro; Frisardi, Dario; Iacus, Stefano; Iafrate, Francesco. - In: STATISTICAL INFERENCE FOR STOCHASTIC PROCESSES. - ISSN 1387-0874. - 28:3(2025). [10.1007/s11203-025-09341-w]

Adaptive Elastic-Net estimation for sparse diffusion processes

De Gregorio Alessandro
Co-primo
;
Frisardi Dario
Co-primo
;
Iacus Stefano
Secondo
;
Iafrate Francesco
Co-primo
2025

Abstract

Penalized estimation methods for diffusion processes and dependent data have recently gained significant attention due to their effectiveness in handling stochastic systems. In this work, we introduce an adaptive Elastic-Net estimator for ergodic diffusion processes observed under high-frequency sampling schemes. Our method combines the least squares approximation of the quasi-likelihood with adaptive l1 and l2 regularization. This approach allows to enhance prediction accuracy and interpretability while effectively recovering the sparse underlying structure of the model. In the spirit of recent research trends, we provide finite-sample guarantees for the (block-diagonal) estimator’s performance by deriving high-probability non-asymptotic bounds for the l2 estimation error. These results complement the established oracle properties in the high-frequency asymptotic regime with mixed convergence rates, ensuring consistent selection of the relevant interactions and achieving optimal rates of convergence. Furthermore, we utilize our results to analyze one-step-ahead predictions, offering non-asymptotic control over the l1 prediction error. The performance of our method is evaluated through simulations and real data applications, demonstrating its effectiveness, particularly in scenarios with strongly correlated variables.
2025
discrete observations; rrgodic diffusion processes; non-asymptotic bounds; oracle properties; pathwise optimization; prediction error; regularized estimation
01 Pubblicazione su rivista::01a Articolo in rivista
Adaptive Elastic-Net estimation for sparse diffusion processes / De Gregorio, Alessandro; Frisardi, Dario; Iacus, Stefano; Iafrate, Francesco. - In: STATISTICAL INFERENCE FOR STOCHASTIC PROCESSES. - ISSN 1387-0874. - 28:3(2025). [10.1007/s11203-025-09341-w]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1757167
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