Kullback-Leibler approximation for probability measures on infinite dimensional spaces
- Creators
- Pinski, F. J.
- Simpson, G.
-
Stuart, A. M.
- Weber, H.
Abstract
In a variety of applications it is important to extract information from a probability measure μ on an infinite dimensional space. Examples include the Bayesian approach to inverse problems and (possibly conditioned) continuous time Markov processes. It may then be of interest to find a measure ν, from within a simple class of measures, which approximates μ. This problem is studied in the case where the Kullback--Leibler divergence is employed to measure the quality of the approximation. A calculus of variations viewpoint is adopted, and the particular case where ν is chosen from the set of Gaussian measures is studied in detail. Basic existence and uniqueness theorems are established, together with properties of minimizing sequences. Furthermore, parameterization of the class of Gaussians through the mean and inverse covariance is introduced, the need for regularization is explained, and a regularized minimization is studied in detail. The calculus of variations framework resulting from this work provides the appropriate underpinning for computational algorithms.
Additional Information
© 2015, Society for Industrial and Applied Mathematics. Published by SIAM under the terms of the Creative Commons 4.0 license. Received by the editors March 31, 2014; accepted for publication (in revised form) March 23, 2015; published electronically November 5, 2015. [Pinski's] visit to Warwick was supported by the ERC, EPSRC, and ONR. [Simpson's] research was supported by NSF PIRE grant OISE-0967140 and DOE grant DE-SC0002085. This author's visit to Warwick was supported by the ERC, EPSRC, and ONR. The third author's research was supported by the ERC, EPSRC, and ONR.Attached Files
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Submitted - 1310.7845.pdf
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Additional details
- Eprint ID
- 69076
- Resolver ID
- CaltechAUTHORS:20160715-170335769
- European Research Council (ERC)
- Engineering and Physical Sciences Research Council (EPSRC)
- Office of Naval Research (ONR)
- NSF
- OISE-0967140
- Department of Energy (DOE)
- DE-SC0002085
- Created
-
2016-07-18Created from EPrint's datestamp field
- Updated
-
2021-11-11Created from EPrint's last_modified field
- Other Numbering System Name
- Andrew Stuart
- Other Numbering System Identifier
- J118