public class RandomRules extends AbstractClassifier implements Regressor
| Modifier and Type | Field and Description |
|---|---|
ClassOption |
baseLearnerOption |
protected InstancesHeader[] |
dataset |
protected Classifier[] |
ensemble |
IntOption |
ensembleSizeOption |
protected boolean |
isRegression |
protected int[][] |
listAttributes |
protected int |
numAttributes |
FloatOption |
numAttributesPercentageOption |
FlagOption |
useBaggingOption |
classifierRandom, modelContext, randomSeed, randomSeedOption, trainingWeightSeenByModelclassOptionNamesToPreparedObjects, options| Constructor and Description |
|---|
RandomRules() |
| Modifier and Type | Method and Description |
|---|---|
void |
getModelDescription(StringBuilder out,
int indent)
Returns a string representation of the model.
|
protected Measurement[] |
getModelMeasurementsImpl()
Gets the current measurements of this classifier.
The reason for ...Impl methods: ease programmer burden by not requiring them to remember calls to super in overridden methods. |
String |
getPurposeString()
Gets the purpose of this object
|
Classifier[] |
getSubClassifiers()
Gets the classifiers of this ensemble.
|
double[] |
getVotesForInstance(weka.core.Instance inst)
Predicts the class memberships for a given instance.
|
boolean |
isRandomizable()
Gets whether this classifier needs a random seed.
|
void |
resetLearningImpl()
Resets this classifier.
|
void |
trainOnInstanceImpl(weka.core.Instance inst)
Trains this classifier incrementally using the given instance.
The reason for ...Impl methods: ease programmer burden by not requiring them to remember calls to super in overridden methods. |
contextIsCompatible, copy, correctlyClassifies, getAttributeNameString, getAWTRenderer, getClassLabelString, getClassNameString, getDescription, getModelContext, getModelMeasurements, getNominalValueString, modelAttIndexToInstanceAttIndex, modelAttIndexToInstanceAttIndex, prepareForUseImpl, resetLearning, setModelContext, setRandomSeed, trainingHasStarted, trainingWeightSeenByModel, trainOnInstancediscoverOptionsViaReflection, getCLICreationString, getOptions, getPreparedClassOption, getPreparedClassOption, prepareClassOptions, prepareForUse, prepareForUsecopy, measureByteSize, measureByteSize, toStringclone, equals, finalize, getClass, hashCode, notify, notifyAll, wait, wait, waitgetCLICreationString, getOptions, prepareForUse, prepareForUsemeasureByteSizepublic ClassOption baseLearnerOption
public IntOption ensembleSizeOption
public FloatOption numAttributesPercentageOption
public FlagOption useBaggingOption
protected Classifier[] ensemble
protected boolean isRegression
protected int[][] listAttributes
protected int numAttributes
protected InstancesHeader[] dataset
public String getPurposeString()
OptionHandlergetPurposeString in interface OptionHandlergetPurposeString in class AbstractClassifierpublic void resetLearningImpl()
AbstractClassifierresetLearningImpl in class AbstractClassifierpublic void trainOnInstanceImpl(weka.core.Instance inst)
AbstractClassifiertrainOnInstanceImpl in class AbstractClassifierinst - the instance to be used for trainingpublic double[] getVotesForInstance(weka.core.Instance inst)
ClassifiergetVotesForInstance in interface Classifierinst - the instance to be classifiedpublic boolean isRandomizable()
ClassifierisRandomizable in interface Classifierpublic void getModelDescription(StringBuilder out, int indent)
AbstractClassifiergetModelDescription in class AbstractClassifierout - the stringbuilder to add the descriptionindent - the number of characters to indentprotected Measurement[] getModelMeasurementsImpl()
AbstractClassifiergetModelMeasurementsImpl in class AbstractClassifierpublic Classifier[] getSubClassifiers()
ClassifiergetSubClassifiers in interface ClassifiergetSubClassifiers in class AbstractClassifierCopyright © 2014 University of Waikato, Hamilton, NZ. All Rights Reserved.