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Optimal control with learning on the fly: a toy problem
by
Rowley, Clarence W.
, Weber, Melanie
, Pegueroles, Bernat Guillén
, Fefferman, Charles
in
Brownian motion
/ Expected values
/ Fuel taxes
/ Random variables
2022
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Optimal control with learning on the fly: a toy problem
by
Rowley, Clarence W.
, Weber, Melanie
, Pegueroles, Bernat Guillén
, Fefferman, Charles
in
Brownian motion
/ Expected values
/ Fuel taxes
/ Random variables
2022
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Journal Article
Optimal control with learning on the fly: a toy problem
2022
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Overview
We exhibit optimal control strategies for a simple toy problem in which the underlying dynamics depend on a parameter that is initially unknown and must be learned. We consider a cost function posed over a finite time interval, in contrast to much previous work that considers asymptotics as the time horizon tends to infinity. We study several different versions of the problem, including Bayesian control, in which we assume a prior distribution on the unknown parameter; and “agnostic” control, in which we assume nothing about the unknown parameter. For the agnostic problems, we compare our performance with that of an opponent who knows the value of the parameter. This comparison gives rise to several notions of “regret”, and we obtain strategies that minimize the “worst-case regret” arising from the most unfavorable choice of the unknown parameter. In every case, the optimal strategy turns out to be a Bayesian strategy or a limit of Bayesian strategies.
Publisher
European Mathematical Society Publishing House,European Mathematical Society (EMS)
Subject
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