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ICASSP
2010
IEEE

Learning in Gaussian Markov random fields

13 years 10 months ago
Learning in Gaussian Markov random fields
This paper addresses the problem of state estimation in the case where the prior distribution of the states is not perfectly known but instead is parameterized by some unknown parameter. Thus in order to support the state estimator with prior information on the states and improve the quality of the state estimates, it is necessary to learn this unknown parameter first. Here we assume a parameterized Gaussian Markov random field to model the prior distribution of the states and propose an algorithm that is able to learn its parameters from given observations on these states. The effectiveness of this approach is proven experimentally by simulations.
Thomas J. Riedl, Andrew C. Singer, Jun Won Choi
Added 26 Jan 2011
Updated 26 Jan 2011
Type Journal
Year 2010
Where ICASSP
Authors Thomas J. Riedl, Andrew C. Singer, Jun Won Choi
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