Los puntos clave no están disponibles para este artículo en este momento.
We consider an on-line least squares regression problem with optimal solution ^* and Hessian matrix H, and study a time-average stochastic gradient descent estimator of ^*. For k2, we provide an unbiased estimator of ^* that is a modification of the time-average estimator, runs with an expected number of time-steps of order k, with O (1/k) expected excess risk. The constant behind the O notation depends on parameters of the regression and is a poly-logarithmic function of the smallest eigenvalue of H. We provide both a biased and unbiased estimator of the expected excess risk of the time-average estimator and of its unbiased counterpart, without requiring knowledge of either H or ^*. We describe an "average-start" version of our estimators with similar properties. Our approach is based on randomized multilevel Monte Carlo. Our numerical experiments confirm our theoretical findings.
Nabil Kahalé (Wed,) studied this question.
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: