Training Algorithms for Hidden Markov Models using Entropy Based Distance Functions
Singer, Yoram, Warmuth, Manfred K.
–Neural Information Processing Systems
By adapting a framework used for supervised learning, we construct iterative algorithms that maximize the likelihood of the observations while also attempting to stay "close" to the current estimated parameters. We use a bound on the relative entropy between the two HMMs as a distance measure betweenthem. The result is new iterative training algorithms which are similar to the EM (Baum-Welch) algorithm for training HMMs. The proposed algorithms are composed of a step similar to the expectation step of Baum-Welch and a new update of the parameters which replaces the maximization (re-estimation) step. The algorithm takes only negligibly moretime per iteration and an approximated version uses the same expectation step as Baum-Welch.
Neural Information Processing Systems
Dec-31-1997
- Country:
- North America > United States > California > Santa Cruz County > Santa Cruz (0.14)
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