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Learning Latent Variable Dynamic Graphical Models by Confidence Sets Selection Ciccone V, Ferrante A, Zorzi M IEEE Transactions on Automatic Control, 65(12), 5130, 2020 |
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Process fault diagnosis via the integrated use of graphical lasso and Markov random fields learning & inference Kim C, Lee H, Lee WB Computers & Chemical Engineering, 125, 460, 2019 |
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Efficient Bayesian spatial prediction with mobile sensor networks using Gaussian Markov random fields Xu YF, Choi J, Dass S, Maiti T Automatica, 49(12), 3520, 2013 |
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Maximum Likelihood Sequence Estimation for Hidden Reciprocal Processes White LB, Vu HX IEEE Transactions on Automatic Control, 58(10), 2670, 2013 |
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Spatial prediction with mobile sensor networks using Gaussian processes with built-in Gaussian Markov random fields Xu YF, Choi J Automatica, 48(8), 1735, 2012 |
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Modelling and Estimation for Finite State Reciprocal Processes Carravetta F, White LB IEEE Transactions on Automatic Control, 57(9), 2190, 2012 |
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Decentralized coordination of autonomous swarms using parallel Gibbs sampling Tan XB, Xi W, Baras JS Automatica, 46(12), 2068, 2010 |
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Markov random field based automatic image alignment for electron tomography Amat F, Moussavi F, Comolli LR, Elidan G, Downing KH, Horowitz M Journal of Structural Biology, 161(3), 260, 2008 |