Journal article
Sign-perturbed sums: A new system identification approach for constructing exact non-asymptotic confidence regions in linear regression models
BC Csáji, MC Campi, E Weyer
IEEE Transactions on Signal Processing | Published : 2015
Abstract
We propose a new system identification method, called Sign-Perturbed Sums (SPS), for constructing non-asymptotic confidence regions under mild statistical assumptions. SPS is introduced for linear regression models, including but not limited to FIR systems, and we show that the SPS confidence regions have exact confidence probabilities, i.e., they contain the true parameter with a user-chosen exact probability for any finite data set. Moreover, we also prove that the SPS regions are star convex with the Least-Squares (LS) estimate as a star center. The main assumptions of SPS are that the noise terms are independent and symmetrically distributed about zero, but they can be nonstationary, and..
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Grants
Awarded by Australian Research Council
Funding Acknowledgements
The work of B.C. Csaji was supported in part by the ARC under Grants DE120102601 and DP0986162, and the Janos Bolyai Fellowship of the Hungarian Academy of Sciences, under Grant BO/00683/12/6. The work of M. C. Campi was supported in part by the MIUR- Ministero dell'Istruzione, dell'Universita e della Ricerca. The work of E. Weyer was supported by the Australian Research Council (ARC) under Discovery Grants DP0986162 and DP130104028.