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Networks / Statistical theory / Numerical analysis / Bayesian network / Bayesian inference / XTR / Markov chain / Discretization / Forward–backward algorithm / Statistics / Bayesian statistics / Markov models


Computing Posterior Probabilities of Structural Features in Bayesian Networks Jin Tian and Ru He Department of Computer Science Iowa State University
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Document Date: 2009-05-28 00:58:31


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Carnegie Mellon University / /

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School of Computer Science / Cambridge University / National Science Foundation / MIT / Carnegie Mellon University / Ru He Department of Computer Science Iowa State University Ames / /

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