In this paper, we develop randomized and deterministic algorithms for computing the probabilistic radius of information associated to an identification problem, and the corresponding optimal probabilistic estimate. To compute this estimate, in the companion paper [11] the concept of optimal violation function is introduced. Moreover, for the case of uniform distributions, it is shown how its computation is related to the solution of a (quasi) concave optimization problem, based on to the maximization of the volume of a specially constructed polytope. In this second paper, we move a step further and develop specific algorithms for addressing this problem. In particular, since the problem is NP-hard, we propose both randomized relaxations (based on a probabilistic volume oracle and stochastic optimization algorithms), and deterministic ones (based on semi-definite programming). Finally, we present a numerical example illustrating the performance of the proposed algorithms.

A Probabilistic Approach to Optimal Estimation - Part II: Algorithms and Applications

Dabbene Fabrizio;Tempo Roberto
2012

Abstract

In this paper, we develop randomized and deterministic algorithms for computing the probabilistic radius of information associated to an identification problem, and the corresponding optimal probabilistic estimate. To compute this estimate, in the companion paper [11] the concept of optimal violation function is introduced. Moreover, for the case of uniform distributions, it is shown how its computation is related to the solution of a (quasi) concave optimization problem, based on to the maximization of the volume of a specially constructed polytope. In this second paper, we move a step further and develop specific algorithms for addressing this problem. In particular, since the problem is NP-hard, we propose both randomized relaxations (based on a probabilistic volume oracle and stochastic optimization algorithms), and deterministic ones (based on semi-definite programming). Finally, we present a numerical example illustrating the performance of the proposed algorithms.
2012
2012 IEEE 51ST ANNUAL CONFERENCE ON DECISION AND CONTROL (CDC)
196
201
6
System identification
optimal algorithms
randomized algorithms
uncertain systems
3
none
Dabbene, Fabrizio; Sznaier, Mario; Tempo, Roberto
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/226448
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