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Storable.
IDGMParameterSet instance from
the class that can be instantiated using this IDGMParameterSet.
IDGMParameterSet instance for the
specified class.
Alphabets ignore the case.
IntLists that are used while computing
the partial derivation.
ImageResult from a BufferedImage.
IndependentProductScoringFunction from a given series of
independent NormalizableScoringFunctions.
IndependentProductScoringFunction from given series of
independent NormalizableScoringFunctions and lengths.
Storable.
InhCondProb instance.
InhCondProb instance.
Storable.
InhConstraint instance.
Storable.
InhomogeneousDGM).InhomogeneousDGM from a given
IDGMParameterSet.
Storable.
BayesianNetworkScoringFunction
that is an inhomogeneous Markov model.order.
InhomogeneousMarkov from the corresponding
InstanceParameterSet parameters.
Storable.
InstanceParameterSet that defines the parameters of
an InhomogeneousMarkov structure Measure.InhomogeneousMarkov.InhomogeneousMarkovParameterSet with empty
parameter values.
InhomogeneousMarkov.InhomogeneousMarkovParameterSet with the
parameter for the order set to order.
InhomogeneousMarkov.InhomogeneousMarkovParameterSet from its XML
representation as defined by the Storable
interface.
ScoringFunction.
ScoringFunction randomly.
NormalizableScoringFunction uniformly if it is a AbstractMixtureScoringFunction.
motif randomly using ScoringFunction.initializeFunctionRandomly(boolean).
Parameters in this
ClassifierAssessmentAssessParameterSet.
ParameterTree randomly.
Parameters, which is a
ParameterSet.ParameterList.
Parameters, which is a
ParameterSet.ParameterList, with an initial number of Parameters of
initCapacity.
AlphabetContainer by
incorporating additional Alphabets into an existing
AlphabetContainer.
probs.
Parameters that can be used to
instantiate another class.InstanceParameterSet from the class that can be
instantiated using this InstanceParameterSet.
Storable.
InstanceParameterSet.int array.
DurationScoringFunction that use an internal memory
Sample
s of the array, i.e. it returns a Sample containing only
Sequences that are contained in all Samples of the array.
int.IntList with
initial length 10.
IntList with
initial length size.
IntronAnnotation from a donor
SinglePositionSequenceAnnotation and an acceptor
SinglePositionSequenceAnnotation and a set of additional
annotations.
Storable.
ints and can therefore be used for discrete
AlphabetContainers with alphabets that use a huge number of symbols.IntSequence from an array of int-
encoded alphabet symbols.
IntSequence from a part of the array of
int- encoded alphabet symbols.
IntSequence from a String representation
using the default delimiter.
IntSequence from a String representation
using the delimiter delim.
IntSequence from a SymbolExtractor.
null.
true if the parameter is of an atomic data type,
false otherwise.
true if this ParameterSet contains only
atomic parameters, i.e. the parameters do not contain
ParameterSets themselves.
true if the data type of the Result
test can be casted to that of this instance and both have
the same name and comment for the Result.
true if the Result test and the
current object have the same data type, name and comment for the result.
Alphabets.
DiscreteAlphabet.DiscreteAlphabetParameterSet, i.e.
pos is a discrete random variable,
i.e. if the Alphabet of position pos is discrete.
continuous is a symbol of the Alphabet
used at position pos of the AlphabetContainer.
candidat is an element of the internal
interval.
candidate is an element of the internal
interval.
true if the object is currently used in
a sampling, otherwise false.
true if the object is currently used in
a sampling, otherwise false.
ParameterTree is a
leaf, i.e. it has no children in the network structure of the enclosing
BayesianNetworkScoringFunction.
NormalizableScoringFunctions
are normalized.
true if the given positions are in the domain of the
PositionScoringFunction.
true if the parameters can be varied over a range of
values.
true if this RangeIterator is ranging over a
set of values.
true if the Parameter is required,
false otherwise.
AlphabetContainer also
computes the reverse complement of a Sequence.
sel is selected.
key.
true if the option at position idx is
selected.
true if the parameter was set by the user,
false otherwise.
Measure supports shifts.
AlphabetContainer is simple and all positions use the
same (fixed) Alphabet.
Alphabet, i.e. if the
corresponding AlphabetContainer is simple.
true if the internal NormalizableScoringFunction is a StrandScoringFunction otherwise false.
true if the model has been trained successfully,
false otherwise.
true if the model is trained, false otherwise.
StorableResult.TRUE if the model or classifier was trained when
obtaining its XML representation stored in this StorableResult,
StorableResult.FALSE if it was not, and StorableResult.NA if the object could not be
trained anyway.
true if the value was selected by the user.
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