Package de.jstacs.classifiers.differentiableSequenceScoreBased.sampling

Provides the classes for AbstractScoreBasedClassifiers that are based on SamplingDifferentiableStatisticalModels and that sample parameters using the Metropolis-Hastings algorithm.

See:
          Description

Class Summary
SamplingGenDisMixClassifier A classifier that samples its parameters from a LogGenDisMixFunction using the Metropolis-Hastings algorithm.
SamplingGenDisMixClassifierParameterSet ParameterSet to instantiate a SamplingGenDisMixClassifier.
SamplingScoreBasedClassifier A classifier that samples the parameters of SamplingDifferentiableStatisticalModels by the Metropolis-Hastings algorithm.
SamplingScoreBasedClassifierParameterSet ParameterSet to instantiate a SamplingScoreBasedClassifier.
 

Enum Summary
SamplingScoreBasedClassifier.SamplingScheme Sampling scheme for sampling the parameters of the scoring functions.
 

Package de.jstacs.classifiers.differentiableSequenceScoreBased.sampling Description

Provides the classes for AbstractScoreBasedClassifiers that are based on SamplingDifferentiableStatisticalModels and that sample parameters using the Metropolis-Hastings algorithm. The abstract base class of all such classifiers is the SamplingScoreBasedClassifier, while the SamplingGenDisMixClassifier provides an implementation for the unified generative-discriminative learning principle.

Since:
Jstacs 1.5