Symmetry Guarantees Statistic Recovery in Variational Inference

arXiv stat.ML / 4/21/2026

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Key Points

  • The paper studies variational inference (VI) quality guarantees by focusing on how symmetries shared by the target distribution and variational family can enable recovery of certain statistics even when the model is misspecified.
  • It proposes a general theory that characterizes when VI minimizers inherit target symmetries and under what conditions those symmetries uniquely determine identifiable statistics.
  • The authors show that earlier, problem-specific statistic-recovery results for location-scale families are special cases of the new unified framework.
  • They apply the theory to spherical distributions, deriving new guarantees for directional statistics within von Mises-Fisher variational families.
  • Overall, the work offers a reusable “modular blueprint” for deriving future symmetry-based recovery guarantees across diverse VI settings.

Abstract

Variational inference (VI) is a central tool in modern machine learning, used to approximate an intractable target density by optimising over a tractable family of distributions. As the variational family cannot typically represent the target exactly, guarantees on the quality of the resulting approximation are crucial for understanding which of its properties VI can faithfully capture. Recent work has identified instances in which symmetries of the target and the variational family enable the recovery of certain statistics, even under model misspecification. However, these guarantees are inherently problem-specific and offer little insight into the fundamental mechanism by which symmetry forces statistic recovery. In this paper, we overcome this limitation by developing a general theory of symmetry-induced statistic recovery in variational inference. First, we characterise when variational minimisers inherit the symmetries of the target and establish conditions under which these pin down identifiable statistics. Second, we unify existing results by showing that previously known statistic recovery guarantees in location-scale families arise as special cases of our theory. Third, we apply our framework to distributions on the sphere to obtain novel guarantees for directional statistics in von Mises-Fisher families. Together, these results provide a modular blueprint for deriving new recovery guarantees for VI in a broad range of symmetry settings.