Optimal linear mmse estimation under correlation uncertainty in restricted bayesian framework

Date

2023-01-31

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Source Title

IEEE Transactions on Aerospace and Electronic Systems

Print ISSN

0018-9251

Electronic ISSN

1557-9603

Publisher

Institute of Electrical and Electronics Engineers

Volume

59

Issue

4

Pages

4744 - 4752

Language

en

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Abstract

A restricted Bayes approach is proposed for linear estimation of a scalar random parameter based on a scalar observation under uncertainty regarding the correlation between the parameter and the observation. In particular, the optimal linear estimator that minimizes the average mean-squared error (MSE) is derived under a constraint on the worst-case MSE by considering possible values of the correlation coefficient and its probability distribution. A closed-form expression is derived for the optimal linear estimator in the proposed restricted Bayesian framework by considering a generic statistical characterization of the correlation coefficient. Performance of the proposed estimator is evaluated via numerical examples and its benefits are illustrated in various scenarios. The proposed framework is also extended to the case of vector-valued observation and the properties of the optimal linear estimator are characterized.

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Published Version (Please cite this version)