public class OzaBag extends AbstractClassifier
Oza and Russell developed online versions of bagging and boosting for Data Streams. They show how the process of sampling bootstrap replicates from training data can be simulated in a data stream context. They observe that the probability that any individual example will be chosen for a replicate tends to a Poisson(1) distribution.
[OR] N. Oza and S. Russell. Online bagging and boosting. In Artificial Intelligence and Statistics 2001, pages 105–112. Morgan Kaufmann, 2001.
Parameters:
| Modifier and Type | Field and Description |
|---|---|
ClassOption |
baseLearnerOption |
protected Classifier[] |
ensemble |
IntOption |
ensembleSizeOption |
classifierRandom, modelContext, randomSeed, randomSeedOption, trainingWeightSeenByModelclassOptionNamesToPreparedObjects, options| Constructor and Description |
|---|
OzaBag() |
| 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
protected Classifier[] ensemble
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)
Classifierinst - the instance to be classifiedpublic boolean isRandomizable()
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.