Training Generalized Hidden Markov Model With Interval Probability Parameters

نویسنده

  • Yan Wang
چکیده

Recently generalized interval probability was proposed as a new mathematical formalism of imprecise probability. It provides a simplified probabilistic calculus based on its definitions of conditional probability and independence. The Markov property can be described in a form similar to classical probability. In this paper, an expectation-maximization approach is developed to train generalized hidden Markov models with generalized interval probabilities. With the consideration of systematic error in measurement, the training process provides a robust learning mechanism, where data quality requirement is not as restrictive as the traditional hidden Markov model.

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تاریخ انتشار 2014