On lower bounds for the bias-variance trade-off
Alexis Derumigny, Johannes Schmidt-Hieber

TL;DR
This paper investigates the fundamental limits of the bias-variance trade-off in high-dimensional and nonparametric models, providing lower bounds that quantify the unavoidable nature of this trade-off across various statistical settings.
Contribution
It introduces a general method for deriving lower bounds on estimator variance given bias constraints and applies it to multiple models, revealing the inherent trade-offs involved.
Findings
Lower bounds on variance given bias constraints are established.
Different bias-variance trade-offs are characterized in several models.
The minimax rate can be achieved without balancing bias and variance in some cases.
Abstract
It is a common phenomenon that for high-dimensional and nonparametric statistical models, rate-optimal estimators balance squared bias and variance. Although this balancing is widely observed, little is known whether methods exist that could avoid the trade-off between bias and variance. We propose a general strategy to obtain lower bounds on the variance of any estimator with bias smaller than a prespecified bound. This shows to which extent the bias-variance trade-off is unavoidable and allows to quantify the loss of performance for methods that do not obey it. The approach is based on a number of abstract lower bounds for the variance involving the change of expectation with respect to different probability measures as well as information measures such as the Kullback-Leibler or -divergence. In a second part of the article, the abstract lower bounds are applied to several…
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Taxonomy
TopicsStatistical Methods and Inference · Statistical Methods and Bayesian Inference · Advanced Statistical Methods and Models
MethodsLinear Regression
