Aggregation for Gaussian regression
Florentina Bunea, Alexandre B. Tsybakov, Marten H. Wegkamp

TL;DR
This paper investigates statistical aggregation methods for Gaussian regression, demonstrating that a universal penalized least squares procedure can nearly achieve optimal convergence rates for model selection, convex, linear, and subset selection aggregation.
Contribution
It introduces a universal aggregation procedure that nearly attains optimal rates for multiple aggregation types using penalized least squares with different penalties.
Findings
Universal procedure nearly achieves optimal rates for all aggregation types.
Penalties considered include BIC-type and data-dependent -type.
The approach unifies different aggregation methods under a single framework.
Abstract
This paper studies statistical aggregation procedures in the regression setting. A motivating factor is the existence of many different methods of estimation, leading to possibly competing estimators. We consider here three different types of aggregation: model selection (MS) aggregation, convex (C) aggregation and linear (L) aggregation. The objective of (MS) is to select the optimal single estimator from the list; that of (C) is to select the optimal convex combination of the given estimators; and that of (L) is to select the optimal linear combination of the given estimators. We are interested in evaluating the rates of convergence of the excess risks of the estimators obtained by these procedures. Our approach is motivated by recently published minimax results [Nemirovski, A. (2000). Topics in non-parametric statistics. Lectures on Probability Theory and Statistics (Saint-Flour,…
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