Skewed Bernstein-von Mises theorem and skew-modal approximations
Daniele Durante, Francesco Pozza, Botond Szabo

TL;DR
This paper introduces a new class of skew-symmetric posterior approximations that improve accuracy over Gaussian methods by leveraging a third-order Laplace approach, with theoretical guarantees and practical skew-modal methods.
Contribution
It develops a third-order Laplace-based skew-symmetric approximation family with enhanced convergence rates and practical skew-modal methods, outperforming classical Gaussian approximations in accuracy.
Findings
Improved total variation convergence rate over classical Bernstein-von Mises results.
Skew-modal approximation achieves similar theoretical guarantees using MAP estimates.
Empirical results show high accuracy even with small sample sizes.
Abstract
Gaussian approximations are routinely employed in Bayesian statistics to ease inference when the target posterior is intractable. Although these approximations are asymptotically justified by Bernstein-von Mises type results, in practice the expected Gaussian behavior may poorly represent the shape of the posterior, thus affecting approximation accuracy. Motivated by these considerations, we derive an improved class of closed-form approximations of posterior distributions which arise from a new treatment of a third-order version of the Laplace method yielding approximations in a tractable family of skew-symmetric distributions. Under general assumptions which account for misspecified models and non-i.i.d. settings, this family of approximations is shown to have a total variation distance from the target posterior whose rate of convergence improves by at least one order of magnitude the…
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Taxonomy
TopicsStatistical Methods and Bayesian Inference · Advanced Statistical Methods and Models · Statistical Methods and Inference
