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This article is cited in 3 scientific papers (total in 3 papers)
Stochastic Systems
Minimax linear estimation with the probability criterion under unimodal noise and bounded parameters
A. S. Arkhipov, K. V. Semenikhin Moscow Aviation Institute, Moscow, Russia
Abstract:
We consider a linear regression model with a vector of bounded parameters and a centered noise vector that has an uncertain unimodal distribution but known covariance matrix. We pose the minimax estimation problem for a linear combination of unknown parameters with the use of the probability criterion. The minimax estimate is determined as a result of minimizing a probability bound over the region of possible values of the variance and squared bias for all possible linear estimates. We establish that the resulting robust solution is less conservative in comparison with wider classes of distributions.
Keywords:
minimax estimation, probability criterion, bounded parameters, unimodal noise, worst-case distribution.
Citation:
A. S. Arkhipov, K. V. Semenikhin, “Minimax linear estimation with the probability criterion under unimodal noise and bounded parameters”, Avtomat. i Telemekh., 2020, no. 7, 14–33; Autom. Remote Control, 81:7 (2020), 1176–1191
Linking options:
https://www.mathnet.ru/eng/at15535 https://www.mathnet.ru/eng/at/y2020/i7/p14
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Abstract page: | 240 | Full-text PDF : | 44 | References: | 38 | First page: | 19 |
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