Conference Proceedings

Strong consistency of the Sign-Perturbed Sums method

BC Csaji, MC Campi, E Weyer

Proceedings of the IEEE Conference on Decision and Control | Published : 2014

Abstract

Sign-Perturbed Sums (SPS) is a recently developed non-asymptotic system identification algorithm that constructs confidence regions for parameters of dynamical systems. It works under mild statistical assumptions, such as symmetric and independent noise terms. The SPS confidence region includes the least-squares estimate, and, for any finite sample and user-chosen confidence probability, the constructed region contains the true system parameter with exactly the given probability. The main contribution in this paper is to prove that SPS is strongly consistent, in case of linear regression based models, in the sense that any false parameter will almost surely be excluded from the confidence re..

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