English

Adaptive Elastic-Net estimation for sparse diffusion processes

Statistics Theory 2024-12-24 v1 Statistics Theory

Abstract

Penalized estimation methods for diffusion processes and dependent data have recently gained significant attention due to their effectiveness in handling high-dimensional 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 1\ell_1 and 2\ell_2 regularization. This approach allows to enhance prediction accuracy and interpretability while effectively recovering the sparse underlying structure of the model. In the spirit of analyzing high-dimensional scenarios, we provide finite-sample guarantees for the (block-diagonal) estimator's performance by deriving high-probability non-asymptotic bounds for the 2\ell_2 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 1\ell_1 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.

Keywords

Cite

@article{arxiv.2412.16659,
  title  = {Adaptive Elastic-Net estimation for sparse diffusion processes},
  author = {Alessandro De Gregorio and Dario Frisardi and Francesco Iafrate and Stefano Iacus},
  journal= {arXiv preprint arXiv:2412.16659},
  year   = {2024}
}