Package de.jstacs.sequenceScores.statisticalModels.trainable.hmm.training

The package provides all classes used to determine the training algorithm of a hidden Markov model.

See:
          Description

Class Summary
BaumWelchParameterSet This class implements an HMMTrainingParameterSet for the Baum-Welch training of an AbstractHMM.
HMMTrainingParameterSet This class implements an abstract ParameterSet that is used for the training of an AbstractHMM.
MaxHMMTrainingParameterSet This class is the super class for any HMMTrainingParameterSet that is used for a maximizing training algorithm of a hidden Markov model.
MultiThreadedTrainingParameterSet This class is the super class for any MaxHMMTrainingParameterSet that is used for a multi-threaded maximizing training algorithm of a hidden Markov model.
NumericalHMMTrainingParameterSet This class implements an ParameterSet for numerical training of an AbstractHMM.
SamplingHMMTrainingParameterSet This class contains the parameters for training training an AbstractHMM using a sampling strategy.
ViterbiParameterSet This class implements an ParameterSet for the viterbi training of an AbstractHMM.
 

Package de.jstacs.sequenceScores.statisticalModels.trainable.hmm.training Description

The package provides all classes used to determine the training algorithm of a hidden Markov model.

Since:
Jstacs 1.5
See Also:
HMMTrainingParameterSet