Approximate variational inference based on a finite sample of Gaussian latent variables

Variational methods are employed in situations where exact Bayesian inference becomes intractable due to the difficulty in performing certain integrals. Typically, variational methods postulate a tractable posterior and formulate a lower bound on the desired integral to be approximated, e.g. margina...

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Hauptverfasser: Gianniotis, Nikolaos (VerfasserIn) , Schnörr, Christoph (VerfasserIn)
Dokumenttyp: Article (Journal)
Sprache:Englisch
Veröffentlicht: May 2016
In: Pattern analysis and applications
Year: 2016, Jahrgang: 19, Heft: 2, Pages: 475-485
ISSN:1433-755X
DOI:10.1007/s10044-015-0496-9
Online-Zugang:Resolving-System, Volltext: http://dx.doi.org/10.1007/s10044-015-0496-9
Verlag, Volltext: https://link.springer.com/article/10.1007/s10044-015-0496-9
Volltext
Verfasserangaben:Nikolaos Gianniotis, Christoph Schnörr, Christian Molkenthin, Sanjay Singh Bora
Beschreibung
Zusammenfassung:Variational methods are employed in situations where exact Bayesian inference becomes intractable due to the difficulty in performing certain integrals. Typically, variational methods postulate a tractable posterior and formulate a lower bound on the desired integral to be approximated, e.g. marginal likelihood. The lower bound is then optimised with respect to its free parameters, the so-called variational parameters. However, this is not always possible as for certain integrals it is very challenging (or tedious) to come up with a suitable lower bound. Here, we propose a simple scheme that overcomes some of the awkward cases where the usual variational treatment becomes difficult. The scheme relies on a rewriting of the lower bound on the model log-likelihood. We demonstrate the proposed scheme on a number of synthetic and real examples, as well as on a real geophysical model for which the standard variational approaches are inapplicable.
Beschreibung:Published online: 30 June 2015
Gesehen am 19.12.2018
Beschreibung:Online Resource
ISSN:1433-755X
DOI:10.1007/s10044-015-0496-9