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On Weak Convergence of Gaussian Conditional Distributions

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Mathias Drton

Prof. Dr.

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Abstract

Weak convergence of joint distributions generally does not imply convergence of conditional distributions. In particular, conditional distributions need not converge when joint Gaussian distributions converge to a singular Gaussian limit. Algebraically, this is due to the fact that at singular covariance matrices, Schur complements are not continuous functions of the matrix entries. Our results lay out special conditions under which convergence of Gaussian conditional distributions nevertheless occurs, and we exemplify how this allows one to reason about conditional independence in a new class of graphical models.

article


Statistics and Probability Letters

226.110497. Nov. 2025.
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Authors

S. Lumpp • M. Drton

Links

DOI

Research Area

 A1 | Statistical Foundations & Explainability

BibTeXKey: LD25

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