Empirical Bayes estimation: When does $g$-modeling beat $f$-modeling in theory (and in practice)?
Yandi Shen, Yihong Wu

TL;DR
This paper demonstrates that for heavy-tailed data, $g$-modeling approaches in Empirical Bayes outperform $f$-modeling methods in terms of regret, providing theoretical justification for their superiority under certain conditions.
Contribution
The paper offers a theoretical analysis showing $g$-modeling methods achieve optimal regret for heavy-tailed priors, unlike $f$-modeling which can be suboptimal despite optimal density estimation.
Findings
$g$-modeling achieves optimal regret $ ilde heta(n^{3/(2p+1)})$ for heavy-tailed priors.
$f$-modeling can have optimal density estimation but suboptimal regret.
NPMLE, a $g$-modeling method, succeeds without regularization.
Abstract
Empirical Bayes (EB) is a popular framework for large-scale inference that aims to find data-driven estimators to compete with the Bayesian oracle that knows the true prior. Two principled approaches to EB estimation have emerged over the years: -modeling, which constructs an approximate Bayes rule by estimating the marginal distribution of the data, and -modeling, which estimates the prior from data and then applies the learned Bayes rule. For the Poisson model, the prototypical examples are the celebrated Robbins estimator and the nonparametric MLE (NPMLE), respectively. It has long been recognized in practice that the Robbins estimator, while being conceptually appealing and computationally simple, lacks robustness and can be easily derailed by ``outliers'', unlike the NPMLE which provides more stable and interpretable fit thanks to its Bayes form. On the other hand, not only…
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Taxonomy
TopicsStatistical Methods and Inference · Machine Learning and Algorithms · Statistical Methods and Bayesian Inference
