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Sitemap > Veranstaltungen und Termine > Joint IAS Talk / Analysis seminar of the Center for Mathematics given by Prof. Sanjoy K. Mitter (MIT) "Variational Approach to Nonlinear Estimation"

 Vortrag

Joint IAS Talk / Analysis seminar of the Center for Mathematics given by Prof. Sanjoy K. Mitter (MIT) "Variational Approach to Nonlinear Estimation"

Donnerstag 12.05.2011, 17:00 - 18:30



Veranstaltungsort:

Institute for Advanced Study, Auditorium (Room 0.001; ground floor), Lichtenbergstrasse 2 a, 85748 Garching 

Vortragender
TUM-IAS Visiting Fellow Prof. Sanjoy K. Mitter, Department of Electrical Engineering and Computer Science and the Laboratory for Information and Decision Systems, Massachusetts Institute of Technology, Cambridge, USA

Title: "Variational Approach to Nonlinear Estimation"

We consider estimation problems, in which the estimand, $X$, and observation, $Y$, take values in measurable spaces. Regular conditional versions of the forward and inverse Bayes formula are shown to have dual variational characterisations involving the minimisation of an {\em apparent information}, and the maximisation of a {\em compatible information}. These both have natural information theoretic interpretations, according to which Bayes' formula and its inverse are optimal information processors. The variational characterisation of the forward formula has the same form as that of Gibbs measures in statistical mechanics. The special case in which $X$ and $Y$ are diffusion processes governed by stochastic differential equations is examined in detail. The minimisation of apparent information can then be formulated as a stochastic optimal control problem, with cost that is quadratic in both the control and observation fit. The dual problem can be formulated in terms of infinite-dimensional deterministic optimal control. Local versions of the variational characterizations are developed, which quantify information {\em flow} in the estimators. In this context, the information conserving property of Bayesian estimators coincides with the Davis-Varaiya martingale stochastic dynamic programming principle. (Joint work with Nigel Newton, University of Essex, UK)

The lecture can be attended without previous notice.


Veranstalter
TUM Institute for Advanced Study (TUM-IAS) / TUM Zentrum Mathematik

Ansprechpartner
info@tum-ias.de


Weitere Informationen unter: http://www.tum-ias.de

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