public class AdaBoostM1 extends RandomizableIteratedSingleClassifierEnhancer implements WeightedInstancesHandler, Sourcable, TechnicalInformationHandler
@inproceedings{Freund1996,
address = {San Francisco},
author = {Yoav Freund and Robert E. Schapire},
booktitle = {Thirteenth International Conference on Machine Learning},
pages = {148-156},
publisher = {Morgan Kaufmann},
title = {Experiments with a new boosting algorithm},
year = {1996}
}
Valid options are:
-P <num> Percentage of weight mass to base training on. (default 100, reduce to around 90 speed up)
-Q Use resampling for boosting.
-S <num> Random number seed. (default 1)
-I <num> Number of iterations. (default 10)
-D If set, classifier is run in debug mode and may output additional info to the console
-W Full name of base classifier. (default: weka.classifiers.trees.DecisionStump)
Options specific to classifier weka.classifiers.trees.DecisionStump:
-D If set, classifier is run in debug mode and may output additional info to the consoleOptions after -- are passed to the designated classifier.
| Modifier and Type | Field and Description |
|---|---|
protected double[] |
m_Betas
Array for storing the weights for the votes.
|
protected int |
m_NumClasses
The number of classes
|
protected int |
m_NumIterationsPerformed
The number of successfully generated base classifiers.
|
protected boolean |
m_UseResampling
Use boosting with reweighting?
|
protected int |
m_WeightThreshold
Weight Threshold.
|
protected Classifier |
m_ZeroR
a ZeroR model in case no model can be built from the data
|
m_Seedm_Classifiers, m_NumIterationsm_Classifierm_Debug| Constructor and Description |
|---|
AdaBoostM1()
Constructor.
|
| Modifier and Type | Method and Description |
|---|---|
void |
buildClassifier(Instances data)
Boosting method.
|
protected void |
buildClassifierUsingResampling(Instances data)
Boosting method.
|
protected void |
buildClassifierWithWeights(Instances data)
Boosting method.
|
protected String |
defaultClassifierString()
String describing default classifier.
|
double[] |
distributionForInstance(Instance instance)
Calculates the class membership probabilities for the given test instance.
|
Capabilities |
getCapabilities()
Returns default capabilities of the classifier.
|
String[] |
getOptions()
Gets the current settings of the Classifier.
|
String |
getRevision()
Returns the revision string.
|
TechnicalInformation |
getTechnicalInformation()
Returns an instance of a TechnicalInformation object, containing
detailed information about the technical background of this class,
e.g., paper reference or book this class is based on.
|
boolean |
getUseResampling()
Get whether resampling is turned on
|
int |
getWeightThreshold()
Get the degree of weight thresholding
|
String |
globalInfo()
Returns a string describing classifier
|
Enumeration |
listOptions()
Returns an enumeration describing the available options.
|
static void |
main(String[] argv)
Main method for testing this class.
|
protected Instances |
selectWeightQuantile(Instances data,
double quantile)
Select only instances with weights that contribute to
the specified quantile of the weight distribution
|
void |
setOptions(String[] options)
Parses a given list of options.
|
void |
setUseResampling(boolean r)
Set resampling mode
|
protected void |
setWeights(Instances training,
double reweight)
Sets the weights for the next iteration.
|
void |
setWeightThreshold(int threshold)
Set weight threshold
|
String |
toSource(String className)
Returns the boosted model as Java source code.
|
String |
toString()
Returns description of the boosted classifier.
|
String |
useResamplingTipText()
Returns the tip text for this property
|
String |
weightThresholdTipText()
Returns the tip text for this property
|
getSeed, seedTipText, setSeedgetNumIterations, numIterationsTipText, setNumIterationsclassifierTipText, getClassifier, getClassifierSpec, setClassifierclassifyInstance, debugTipText, forName, getDebug, makeCopies, makeCopy, runClassifier, setDebugprotected double[] m_Betas
protected int m_NumIterationsPerformed
protected int m_WeightThreshold
protected boolean m_UseResampling
protected int m_NumClasses
protected Classifier m_ZeroR
public String globalInfo()
public TechnicalInformation getTechnicalInformation()
getTechnicalInformation in interface TechnicalInformationHandlerprotected String defaultClassifierString()
defaultClassifierString in class SingleClassifierEnhancerprotected Instances selectWeightQuantile(Instances data, double quantile)
data - the input instancesquantile - the specified quantile eg 0.9 to select
90% of the weight masspublic Enumeration listOptions()
listOptions in interface OptionHandlerlistOptions in class RandomizableIteratedSingleClassifierEnhancerpublic void setOptions(String[] options) throws Exception
-P <num> Percentage of weight mass to base training on. (default 100, reduce to around 90 speed up)
-Q Use resampling for boosting.
-S <num> Random number seed. (default 1)
-I <num> Number of iterations. (default 10)
-D If set, classifier is run in debug mode and may output additional info to the console
-W Full name of base classifier. (default: weka.classifiers.trees.DecisionStump)
Options specific to classifier weka.classifiers.trees.DecisionStump:
-D If set, classifier is run in debug mode and may output additional info to the consoleOptions after -- are passed to the designated classifier.
setOptions in interface OptionHandlersetOptions in class RandomizableIteratedSingleClassifierEnhanceroptions - the list of options as an array of stringsException - if an option is not supportedpublic String[] getOptions()
getOptions in interface OptionHandlergetOptions in class RandomizableIteratedSingleClassifierEnhancerpublic String weightThresholdTipText()
public void setWeightThreshold(int threshold)
threshold - the percentage of weight mass used for trainingpublic int getWeightThreshold()
public String useResamplingTipText()
public void setUseResampling(boolean r)
r - true if resampling should be donepublic boolean getUseResampling()
public Capabilities getCapabilities()
getCapabilities in interface CapabilitiesHandlergetCapabilities in class SingleClassifierEnhancerCapabilitiespublic void buildClassifier(Instances data) throws Exception
buildClassifier in class IteratedSingleClassifierEnhancerdata - the training data to be used for generating the
boosted classifier.Exception - if the classifier could not be built successfullyprotected void buildClassifierUsingResampling(Instances data) throws Exception
data - the training data to be used for generating the
boosted classifier.Exception - if the classifier could not be built successfullyprotected void setWeights(Instances training, double reweight) throws Exception
training - the training instancesreweight - the reweighting factorException - if something goes wrongprotected void buildClassifierWithWeights(Instances data) throws Exception
data - the training data to be used for generating the
boosted classifier.Exception - if the classifier could not be built successfullypublic double[] distributionForInstance(Instance instance) throws Exception
distributionForInstance in class Classifierinstance - the instance to be classifiedException - if instance could not be classified
successfullypublic String toSource(String className) throws Exception
public String toString()
public String getRevision()
getRevision in interface RevisionHandlergetRevision in class Classifierpublic static void main(String[] argv)
argv - the optionsCopyright © 2015 University of Waikato, Hamilton, NZ. All rights reserved.