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java.lang.Objectde.jstacs.scoringFunctions.AbstractNormalizableScoringFunction
de.jstacs.scoringFunctions.VariableLengthScoringFunction
de.jstacs.scoringFunctions.homogeneous.HomogeneousScoringFunction
de.jstacs.scoringFunctions.homogeneous.UniformHomogeneousScoringFunction
public class UniformHomogeneousScoringFunction
This scoring function does nothing. So it is possible to save parameters in an optimization.
| Field Summary |
|---|
| Fields inherited from class de.jstacs.scoringFunctions.AbstractNormalizableScoringFunction |
|---|
alphabets, length, r |
| Fields inherited from interface de.jstacs.scoringFunctions.ScoringFunction |
|---|
UNKNOWN |
| Constructor Summary | |
|---|---|
UniformHomogeneousScoringFunction(AlphabetContainer alphabets,
double ess)
This is the main constructor that creates an instance that models each sequence uniformly. |
|
UniformHomogeneousScoringFunction(StringBuffer xml)
This is the constructor for Storable. |
|
| Method Summary | |
|---|---|
void |
addGradientOfLogPriorTerm(double[] grad,
int start)
This method computes the gradient of getLogPriorTerm() for each parameter of this model. |
protected void |
fromXML(StringBuffer xml)
This method is called in the constructor to create a scoring function from a StringBuffer |
double[] |
getCurrentParameterValues()
Returns a double array of dimension getNumberOfParameters() containing the current parameter
values. |
double |
getEss()
Returns the equivalent sample size of this model, i.e. the equivalent sample size for the class or component that is represented by this model. |
String |
getInstanceName()
Returns a short instance name. |
double |
getLogPriorTerm()
This method computes a value that is proportional to getESS()*Math.log( getNormalizationConstant() ) + Math.log( prior ). |
double |
getLogScore(Sequence seq,
int start,
int length)
This method computes the logarithm of the score for a given subsequence. |
double |
getLogScoreAndPartialDerivation(Sequence seq,
int start,
int length,
IntList indices,
DoubleList dList)
This method computes the logarithm of the score and the partial derivations for a given subsequence. |
int |
getMaximalMarkovOrder()
Returns the maximal used markov oder. |
double |
getNormalizationConstant(int length)
This method returns the normalization constant for a given sequence length. |
int |
getNumberOfParameters()
The number of parameters in this scoring function. |
double |
getPartialNormalizationConstant(int parameterIndex,
int length)
This method returns the partial normalization constant for a given parameter index and sequence length. |
int |
getSizeOfEventSpaceForRandomVariablesOfParameter(int index)
Returns the size of the event space of the random variables that are affected by parameter no. |
double[] |
getStationarySymbolDistribution()
This method returns the stationary symbol distribution. |
void |
initializeFunction(int index,
boolean meila,
Sample[] data,
double[][] weights)
This method creates the underlying structure of the scoring function. |
void |
initializeFunctionRandomly(boolean freeParams)
This method initializes the scoring function randomly. |
boolean |
isInitialized()
This method can be used to determine whether the model is initialized. |
boolean |
isNormalized()
This method returns whether the implemented score is already normalized to 1. |
void |
setParameters(double[] params,
int start)
This method sets the internal parameters to the values of params between start and
start + this.getNumberOfParameters() - 1 |
void |
setStatisticForHyperparameters(int[] length,
double[] weights)
This method sets the hyperparameters for the model parameters by evaluating the given statistic. |
String |
toString()
|
StringBuffer |
toXML()
This method returns an XML-representation of an instance of the implementing class. |
| Methods inherited from class de.jstacs.scoringFunctions.VariableLengthScoringFunction |
|---|
getLogScore, getLogScoreAndPartialDerivation, getNormalizationConstant, getPartialNormalizationConstant |
| Methods inherited from class de.jstacs.scoringFunctions.AbstractNormalizableScoringFunction |
|---|
clone, getAlphabetContainer, getInitialClassParam, getLength, getLogScore, getLogScoreAndPartialDerivation, getNumberOfRecommendedStarts, isNormalized |
| Methods inherited from class java.lang.Object |
|---|
equals, finalize, getClass, hashCode, notify, notifyAll, wait, wait, wait |
| Constructor Detail |
|---|
public UniformHomogeneousScoringFunction(AlphabetContainer alphabets,
double ess)
alphabets - the AlphabetContaineress - the equivalent sample size (ess) for the class
public UniformHomogeneousScoringFunction(StringBuffer xml)
throws NonParsableException
Storable.
xml - the xml representation
NonParsableException - if the representation could not be parsed.| Method Detail |
|---|
public String getInstanceName()
ScoringFunction
public double getLogScore(Sequence seq,
int start,
int length)
VariableLengthScoringFunction
getLogScore in class VariableLengthScoringFunctionseq - the sequencestart - the start indexlength - the end index
ScoringFunction.getLogScore(Sequence, int)
public double getLogScoreAndPartialDerivation(Sequence seq,
int start,
int length,
IntList indices,
DoubleList dList)
VariableLengthScoringFunction
getLogScoreAndPartialDerivation in class VariableLengthScoringFunctionseq - the sequencestart - the start indexlength - the end indexindices - the list for the indices of the parametersdList - the list for the partial derivations
ScoringFunction.getLogScoreAndPartialDerivation(Sequence, int, IntList,
DoubleList)public int getNumberOfParameters()
ScoringFunctionUNKNOWN.
ScoringFunction.UNKNOWN
public void setParameters(double[] params,
int start)
ScoringFunctionparams between start and
start + this.getNumberOfParameters() - 1
params - the parametersstart - the start indexpublic StringBuffer toXML()
Storable
public double getNormalizationConstant(int length)
VariableLengthScoringFunction
getNormalizationConstant in class VariableLengthScoringFunctionlength - the sequence length
NormalizableScoringFunction.getNormalizationConstant()
public void initializeFunction(int index,
boolean meila,
Sample[] data,
double[][] weights)
ScoringFunction
index - the index of the class the scoring function modelsmeila - if true, the (reduced) parameterization is useddata - the samplesweights - the weights of the sequences in the samples
protected void fromXML(StringBuffer xml)
throws NonParsableException
AbstractNormalizableScoringFunction
fromXML in class AbstractNormalizableScoringFunctionxml - the XML representation
NonParsableException - if the StringBuffer could not be parsed.public int getSizeOfEventSpaceForRandomVariablesOfParameter(int index)
NormalizableScoringFunctionindex,
i.e. the product of the sizes of the alphabets at the position of each random variable affected by parameter
index. For DNA-alphabets this corresponds to 4 for a PWM, 16 for a WAM except position 0, ...
index - the index of the parameter
public double getPartialNormalizationConstant(int parameterIndex,
int length)
throws Exception
VariableLengthScoringFunction
getPartialNormalizationConstant in class VariableLengthScoringFunctionparameterIndex - the index of the parameterlength - the sequence length
Exception - if something went wrongNormalizableScoringFunction.getPartialNormalizationConstant(int)public double getEss()
NormalizableScoringFunction
public String toString()
toString in class Objectpublic double getLogPriorTerm()
NormalizableScoringFunction
getESS()*Math.log( getNormalizationConstant() ) + Math.log( prior ).
prior is the prior for the parameters of this model.
- Returns:
getESS()*Math.log( getNormalizationConstant() ) + Math.log( prior )- See Also:
NormalizableScoringFunction.getEss(),
NormalizableScoringFunction.getNormalizationConstant()
public void addGradientOfLogPriorTerm(double[] grad,
int start)
NormalizableScoringFunctiongetLogPriorTerm() for each parameter of this model. The
results are added to the array grad beginning at index start.
grad - the gradientstart - the start index in the grad array, where the partial derivations for the parameters of
this models shall be enterNormalizableScoringFunction.getLogPriorTerm()
public double[] getCurrentParameterValues()
throws Exception
ScoringFunctiongetNumberOfParameters() containing the current parameter
values. If on e likes to use these parameters to start an optimization it is highly recommended to invoke
ScoringFunction.initializeFunction(int, boolean, Sample[], double[][]) before. After an optimization
this method can be used to get the current parameter values.
Exception - is thrown if no parameters exist, yetpublic boolean isInitialized()
ScoringFunctionScoringFunction.initializeFunction(int, boolean, Sample[], double[][]).
true if the model is initializedpublic boolean isNormalized()
NormalizableScoringFunctionfalse.
isNormalized in interface NormalizableScoringFunctionisNormalized in class AbstractNormalizableScoringFunctionpublic int getMaximalMarkovOrder()
HomogeneousScoringFunction
getMaximalMarkovOrder in class HomogeneousScoringFunction
public void initializeFunctionRandomly(boolean freeParams)
throws Exception
ScoringFunction
freeParams - if true, the (reduced) parameterization is used
Exceptionpublic double[] getStationarySymbolDistribution()
VariableLengthScoringFunctionde.jstacs.motifDiscovery.Mutable#expand(int, double[], double[], double),
de.jstacs.motifDiscovery.Mutable#shift(double[], double[], double) and
de.jstacs.motifDiscovery.Mutable#shrink(double[], double[], double).
getStationarySymbolDistribution in class VariableLengthScoringFunctionMutable
public void setStatisticForHyperparameters(int[] length,
double[] weights)
throws Exception
VariableLengthScoringFunctionlength) and how often (weight) they have been seen.
setStatisticForHyperparameters in class VariableLengthScoringFunctionlength - the non-negative lengths of the sequencesweights - the non-negative weight for the corresponding sequence
Exception - if something went wrongMutable
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