Uses of Class
de.jstacs.sequenceScores.statisticalModels.differentiable.AbstractDifferentiableStatisticalModel

Packages that use AbstractDifferentiableStatisticalModel
de.jstacs.sequenceScores.statisticalModels.differentiable Provides all DifferentiableStatisticalModels, which can compute the gradient with respect to their parameters for a given input Sequence
de.jstacs.sequenceScores.statisticalModels.differentiable.directedGraphicalModels Provides DifferentiableStatisticalModels that are directed graphical models. 
de.jstacs.sequenceScores.statisticalModels.differentiable.homogeneous Provides DifferentiableStatisticalModels that are homogeneous, i.e. 
de.jstacs.sequenceScores.statisticalModels.differentiable.mixture Provides DifferentiableSequenceScores that are mixtures of other DifferentiableSequenceScores. 
de.jstacs.sequenceScores.statisticalModels.differentiable.mixture.motif   
 

Uses of AbstractDifferentiableStatisticalModel in de.jstacs.sequenceScores.statisticalModels.differentiable
 

Subclasses of AbstractDifferentiableStatisticalModel in de.jstacs.sequenceScores.statisticalModels.differentiable
 class AbstractVariableLengthDiffSM
          This abstract class implements some methods declared in DifferentiableStatisticalModel based on the declaration of methods in VariableLengthDiffSM.
 class CyclicMarkovModelDiffSM
          This scoring function implements a cyclic Markov model of arbitrary order and periodicity for any sequence length.
 class MappingDiffSM
          This class implements a DifferentiableStatisticalModel that works on mapped Sequences.
 class MarkovRandomFieldDiffSM
          This class implements the scoring function for any MRF (Markov Random Field).
 class NormalizedDiffSM
          This class makes an unnormalized DifferentiableStatisticalModel to a normalized DifferentiableStatisticalModel.
 

Methods in de.jstacs.sequenceScores.statisticalModels.differentiable that return AbstractDifferentiableStatisticalModel
 AbstractDifferentiableStatisticalModel AbstractDifferentiableStatisticalModel.clone()
           
 

Uses of AbstractDifferentiableStatisticalModel in de.jstacs.sequenceScores.statisticalModels.differentiable.directedGraphicalModels
 

Subclasses of AbstractDifferentiableStatisticalModel in de.jstacs.sequenceScores.statisticalModels.differentiable.directedGraphicalModels
 class BayesianNetworkDiffSM
          This class implements a scoring function that is a moral directed graphical model, i.e.
 class MarkovModelDiffSM
          This class implements a AbstractDifferentiableStatisticalModel for an inhomogeneous Markov model.
 

Uses of AbstractDifferentiableStatisticalModel in de.jstacs.sequenceScores.statisticalModels.differentiable.homogeneous
 

Subclasses of AbstractDifferentiableStatisticalModel in de.jstacs.sequenceScores.statisticalModels.differentiable.homogeneous
 class HomogeneousDiffSM
          This is the main class for all homogeneous DifferentiableSequenceScores.
 class HomogeneousMM0DiffSM
          This scoring function implements a homogeneous Markov model of order zero (hMM(0)) for a fixed sequence length.
 class HomogeneousMMDiffSM
          This scoring function implements a homogeneous Markov model of arbitrary order for any sequence length.
 class UniformHomogeneousDiffSM
          This scoring function does nothing.
 

Uses of AbstractDifferentiableStatisticalModel in de.jstacs.sequenceScores.statisticalModels.differentiable.mixture
 

Subclasses of AbstractDifferentiableStatisticalModel in de.jstacs.sequenceScores.statisticalModels.differentiable.mixture
 class AbstractMixtureDiffSM
          This main abstract class for any mixture scoring function (e.g.
 class MixtureDiffSM
          This class implements a real mixture model.
 class StrandDiffSM
          This class enables the user to search on both strand.
 class VariableLengthMixtureDiffSM
          This class implements a mixture of VariableLengthDiffSM by extending MixtureDiffSM and implementing the methods of VariableLengthDiffSM.
 

Uses of AbstractDifferentiableStatisticalModel in de.jstacs.sequenceScores.statisticalModels.differentiable.mixture.motif
 

Subclasses of AbstractDifferentiableStatisticalModel in de.jstacs.sequenceScores.statisticalModels.differentiable.mixture.motif
 class DurationDiffSM
          This class is the super class for all one dimensional position scoring functions that can be used as durations for semi Markov models.
 class ExtendedZOOPSDiffSM
          This class handles mixtures with at least one hidden motif.
 class MixtureDurationDiffSM
          This class implements a mixture of DurationDiffSMs.
 class PositionDiffSM
          This class implements a position scoring function that enables the user to get a score without using a Sequence object.
 class SkewNormalLikeDurationDiffSM
          This class implements a skew normal like discrete truncated distribution.
 class UniformDurationDiffSM
          This scoring function implements a uniform distribution for positions.