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Estimation for the Linear Model with Uncertain Covariance Matrices

28 January 2014
Dave Zachariah
Nafiseh Shariati
M. Bengtsson
M. Jansson
Saikat Chatterjee
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Abstract

We derive a maximum a posteriori estimator for the linear observation model, where the signal and noise covariance matrices are both uncertain. The uncertainties are treated probabilistically by modeling the covariance matrices with prior inverse-Wishart distributions. The nonconvex problem of jointly estimating the signal of interest and the covariance matrices is tackled by a computationally efficient fixed-point iteration as well as an approximate variational Bayes solution. The statistical performance of estimators is compared numerically to state-of-the-art estimators from the literature and shown to perform favorably.

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