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DOKOUPIL, J. VÁCLAVEK, P.
Original Title
Data-driven stabilized forgetting design using the geometric mean of normal probability densities
Type
conference paper
Language
English
Original Abstract
This paper contributes to the solution of adaptive tracking issues adopting Bayesian principles. The incomplete model of parameter variations is substituted by relaying on the use of data-suppressing procedure with two goals pursued: to provide automatic memory scheduling through the data-driven forgetting factor, and to compensate for the potential loss of persistency. The solution we propose is the geometric mean of the posterior probability density function (pdf) and its proper alternative, which, for the normal distribution, can be reduced to the convex combination of the information matrix and its regular counterpart. This coupling policy results from maximin decision-making, where the Kullback-Leibler divergence (KLD) occurs as a measure of discrepancy. In this context, the weight (probability) assigned to the information matrix is regarded as the forgetting factor and is controlled by a globally convergent Newton algorithm.
Keywords
estimation; forgetting factor; Kullback-Leibler divergence; normal distribution
Authors
DOKOUPIL, J.; VÁCLAVEK, P.
Released
17. 12. 2018
Publisher
IEEE
ISBN
978-1-5386-1394-8
Book
57th Conference on Decision and Control
Pages from
1403
Pages to
1408
Pages count
6
URL
https://ieeexplore.ieee.org/document/8619117
BibTex
@inproceedings{BUT151914, author="Jakub {Dokoupil} and Pavel {Václavek}", title="Data-driven stabilized forgetting design using the geometric mean of normal probability densities", booktitle="57th Conference on Decision and Control", year="2018", pages="1403--1408", publisher="IEEE", doi="10.1109/CDC.2018.8619117", isbn="978-1-5386-1394-8", url="https://ieeexplore.ieee.org/document/8619117" }