DocumentCode :
3693446
Title :
Online learning as an LQG optimal control problem with random matrices
Author :
Giorgio Gnecco;Alberto Bemporad;Marco Gori;Rita Morisi;Marcello Sanguineti
Author_Institution :
DYSCO Research Unit - IMT Institute for Advanced Studies, Piazza S. Ponziano 6, 55100 Lucca, Italy
fYear :
2015
fDate :
7/1/2015 12:00:00 AM
Firstpage :
2482
Lastpage :
2489
Abstract :
In this paper, we combine optimal control theory and machine learning techniques to propose and solve an optimal control formulation of online learning from supervised examples, which are used to learn an unknown vector parameter modeling the relationship between the input examples and their outputs. We show some connections of the problem investigated with the classical LQG optimal control problem, of which the proposed problem is a non-trivial variation, as it involves random matrices. We also compare the optimal solution to the proposed problem with the Kalman-filter estimate of the parameter vector to be learned, demonstrating its larger smoothness and robustness to outliers. Extension of the proposed online-learning framework are mentioned at the end of the paper.
Keywords :
"Optimal control","Time measurement","Random variables","Mathematical model","Measurement uncertainty","Optimization","Robustness"
Publisher :
ieee
Conference_Titel :
Control Conference (ECC), 2015 European
Type :
conf
DOI :
10.1109/ECC.2015.7330911
Filename :
7330911
Link To Document :
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