Gaussian Approximations for Probability Measures on R^d
- Creators
- Lu, Yulong
-
Stuart, Andrew
- Weber, Hendrik
Abstract
This paper concerns the approximation of probability measures on R^d with respect to the Kullback-Leibler divergence. Given an admissible target measure, we show the existence of the best approximation, with respect to this divergence, from certain sets of Gaussian measures and Gaussian mixtures. The asymptotic behavior of such best approximations is then studied in the small parameter limit where the measure concentrates; this asympotic behavior is characterized using Γ-convergence. The theory developed is then applied to understand the frequentist consistency of Bayesian inverse problems in finite dimensions. For a fixed realization of additive observational noise, we show the asymptotic normality of the posterior measure in the small noise limit. Taking into account the randomness of the noise, we prove a Bernstein-Von Mises type result for the posterior measure.
Additional Information
© 2017 SIAM and ASA. Published by SIAM and ASA under the terms of the Creative Commons 4.0 license. Received by the editors November 28, 2016; accepted for publication (in revised form) June 22, 2017; published electronically November 16, 2017. The first author was supported by EPSRC as part of MASDOC DTC at the University of Warwick with grant EP/HO23364/1. The second author was supported by DARPA, EPSRC, and ONR. The third author was supported by the Royal Society through University Research Fellowship UF140187.Attached Files
Published - 16m1105384.pdf
Submitted - 1611.08642v1.pdf
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Additional details
- Eprint ID
- 73114
- Resolver ID
- CaltechAUTHORS:20161221-163341129
- Engineering and Physical Sciences Research Council (EPSRC)
- EP/HO23364/1
- Defense Advanced Research Projects Agency (DARPA)
- Office of Naval Research (ONR)
- Royal Society
- UF140187
- Created
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2016-12-22Created from EPrint's datestamp field
- Updated
-
2021-11-11Created from EPrint's last_modified field