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Markov models / Bayesian inference / Statistical models / Markov processes / Credal network / Probability bounds analysis / Credal set / Hidden Markov model / Bayesian network / Markov chain / BaumWelch algorithm / Stochastic process
Date: 2016-03-17 09:50:36
Markov models
Bayesian inference
Statistical models
Markov processes
Credal network
Probability bounds analysis
Credal set
Hidden Markov model
Bayesian network
Markov chain
BaumWelch algorithm
Stochastic process

Hidden Markov Models With Set-Valued Parameters Denis Deratani Mau´aa,∗, Alessandro Antonuccib , Cassio Polpo de Camposc a b

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