Uses of Class
de.jstacs.sequenceScores.statisticalModels.trainable.discrete.DiscreteGraphicalTrainSM

Packages that use DiscreteGraphicalTrainSM
de.jstacs.sequenceScores.statisticalModels.trainable.discrete   
de.jstacs.sequenceScores.statisticalModels.trainable.discrete.homogeneous   
de.jstacs.sequenceScores.statisticalModels.trainable.discrete.inhomogeneous This package contains various inhomogeneous models. 
 

Uses of DiscreteGraphicalTrainSM in de.jstacs.sequenceScores.statisticalModels.trainable.discrete
 

Classes in de.jstacs.sequenceScores.statisticalModels.trainable.discrete with type parameters of type DiscreteGraphicalTrainSM
 class DGTrainSMParameterSet<T extends DiscreteGraphicalTrainSM>
          The super ParameterSet for any parameter set of a DiscreteGraphicalTrainSM.
 

Methods in de.jstacs.sequenceScores.statisticalModels.trainable.discrete that return DiscreteGraphicalTrainSM
 DiscreteGraphicalTrainSM DiscreteGraphicalTrainSM.clone()
           
 

Uses of DiscreteGraphicalTrainSM in de.jstacs.sequenceScores.statisticalModels.trainable.discrete.homogeneous
 

Subclasses of DiscreteGraphicalTrainSM in de.jstacs.sequenceScores.statisticalModels.trainable.discrete.homogeneous
 class HomogeneousMM
          This class implements homogeneous Markov models (hMM) of arbitrary order.
 class HomogeneousTrainSM
          This class implements homogeneous models of arbitrary order.
 

Uses of DiscreteGraphicalTrainSM in de.jstacs.sequenceScores.statisticalModels.trainable.discrete.inhomogeneous
 

Subclasses of DiscreteGraphicalTrainSM in de.jstacs.sequenceScores.statisticalModels.trainable.discrete.inhomogeneous
 class BayesianNetworkTrainSM
          The class implements a Bayesian network ( StructureLearner.ModelType.BN ) of fixed order.
 class DAGTrainSM
          The abstract class for directed acyclic graphical models (DAGTrainSM).
 class FSDAGModelForGibbsSampling
          This is the class for a fixed structure directed acyclic graphical model (see FSDAGTrainSM) that can be used in a Gibbs sampling.
 class FSDAGTrainSM
          This class can be used for any discrete fixed structure directed acyclic graphical model ( FSDAGTrainSM).
 class FSMEManager
          This class can be used for any discrete fixed structure maximum entropy model (FSMEM).
 class InhomogeneousDGTrainSM
          This class is the main class for all inhomogeneous discrete graphical models (InhomogeneousDGTrainSM).
 class MEManager
          This class is the super class for all maximum entropy models