Uses of Class
de.jstacs.classifiers.differentiableSequenceScoreBased.gendismix.GenDisMixClassifier

Packages that use GenDisMixClassifier
de.jstacs.classifiers.differentiableSequenceScoreBased.gendismix Provides an implementation of a classifier that allows to train the parameters of a set of DifferentiableStatisticalModels by a unified generative-discriminative learning principle. 
de.jstacs.classifiers.differentiableSequenceScoreBased.msp Provides an implementation of a classifier that allows to train the parameters of a set of DifferentiableStatisticalModels either by maximum supervised posterior (MSP) or by maximum conditional likelihood (MCL). 
de.jstacs.classifiers.differentiableSequenceScoreBased.sampling Provides the classes for AbstractScoreBasedClassifiers that are based on SamplingDifferentiableStatisticalModels and that sample parameters using the Metropolis-Hastings algorithm. 
 

Uses of GenDisMixClassifier in de.jstacs.classifiers.differentiableSequenceScoreBased.gendismix
 

Methods in de.jstacs.classifiers.differentiableSequenceScoreBased.gendismix that return GenDisMixClassifier
 GenDisMixClassifier GenDisMixClassifier.clone()
           
static GenDisMixClassifier[] GenDisMixClassifier.create(GenDisMixClassifierParameterSet params, LogPrior prior, double[] weights, DifferentiableStatisticalModel[]... functions)
          This method creates an array of GenDisMixClassifiers by using the cross-product of the given DifferentiableStatisticalModels.
 

Uses of GenDisMixClassifier in de.jstacs.classifiers.differentiableSequenceScoreBased.msp
 

Subclasses of GenDisMixClassifier in de.jstacs.classifiers.differentiableSequenceScoreBased.msp
 class MSPClassifier
          This class implements a classifier that allows the training via MCL or MSP principle.
 

Uses of GenDisMixClassifier in de.jstacs.classifiers.differentiableSequenceScoreBased.sampling
 

Methods in de.jstacs.classifiers.differentiableSequenceScoreBased.sampling that return GenDisMixClassifier
 GenDisMixClassifier SamplingGenDisMixClassifier.getClassifierForBestParameters(GenDisMixClassifierParameterSet params)
          Returns a standard, i.e., non-sampling, GenDisMixClassifier, where the parameters are set to those that yielded the maximum value of the objective functions among all sampled parameter values.
 GenDisMixClassifier SamplingGenDisMixClassifier.getClassifierForMeanParameters(GenDisMixClassifierParameterSet params, boolean testBurnIn, int minBurnInSteps)
          Returns a standard, i.e., non-sampling, GenDisMixClassifier, where the parameters are set to the mean values over all sampled parameter values in the stationary phase.