Uses of Interface
weka.core.Instance

Packages that use Instance
weka.associations   
weka.attributeSelection   
weka.classifiers   
weka.classifiers.bayes   
weka.classifiers.bayes.net   
weka.classifiers.bayes.net.estimate   
weka.classifiers.evaluation   
weka.classifiers.evaluation.output.prediction   
weka.classifiers.functions   
weka.classifiers.functions.supportVector   
weka.classifiers.lazy   
weka.classifiers.lazy.kstar   
weka.classifiers.meta   
weka.classifiers.misc   
weka.classifiers.pmml.consumer   
weka.classifiers.rules   
weka.classifiers.rules.part   
weka.classifiers.trees   
weka.classifiers.trees.j48   
weka.classifiers.trees.lmt   
weka.classifiers.trees.m5   
weka.clusterers   
weka.core   
weka.core.converters   
weka.core.neighboursearch   
weka.core.neighboursearch.balltrees   
weka.core.pmml   
weka.datagenerators   
weka.datagenerators.classifiers.classification   
weka.datagenerators.classifiers.regression   
weka.datagenerators.clusterers   
weka.experiment   
weka.filters   
weka.filters.supervised.attribute   
weka.filters.supervised.instance   
weka.filters.unsupervised.attribute   
weka.filters.unsupervised.instance   
weka.filters.unsupervised.instance.subsetbyexpression   
weka.gui.beans   
weka.gui.boundaryvisualizer   
weka.gui.explorer   
weka.gui.streams   
 

Uses of Instance in weka.associations
 

Methods in weka.associations with parameters of type Instance
 boolean ItemSet.containedBy(Instance instance)
          Checks if an instance contains an item set.
 void ItemSet.upDateCounter(Instance instance)
          Updates counter of item set with respect to given transaction.
 void LabeledItemSet.upDateCounter(Instance instanceNoClass, Instance instanceClass)
          Updates counter of item set with respect to given transaction.
 

Uses of Instance in weka.attributeSelection
 

Methods in weka.attributeSelection that return Instance
 Instance PrincipalComponents.convertInstance(Instance instance)
          Transform an instance in original (unormalized) format.
 Instance AttributeTransformer.convertInstance(Instance instance)
          Transforms an instance in the format of the original data to the transformed space
 Instance AttributeSelection.reduceDimensionality(Instance in)
          reduce the dimensionality of a single instance to include only those attributes chosen by the last run of attribute selection.
 

Methods in weka.attributeSelection with parameters of type Instance
 Instance PrincipalComponents.convertInstance(Instance instance)
          Transform an instance in original (unormalized) format.
 Instance AttributeTransformer.convertInstance(Instance instance)
          Transforms an instance in the format of the original data to the transformed space
abstract  double HoldOutSubsetEvaluator.evaluateSubset(BitSet subset, Instance holdOut, boolean retrain)
          Evaluates a subset of attributes with respect to a single instance.
 Instance AttributeSelection.reduceDimensionality(Instance in)
          reduce the dimensionality of a single instance to include only those attributes chosen by the last run of attribute selection.
 

Uses of Instance in weka.classifiers
 

Methods in weka.classifiers with parameters of type Instance
 double Classifier.classifyInstance(Instance instance)
          Classifies the given test instance.
 double AbstractClassifier.classifyInstance(Instance instance)
          Classifies the given test instance.
 double[] Classifier.distributionForInstance(Instance instance)
          Predicts the class memberships for a given instance.
 double[] AbstractClassifier.distributionForInstance(Instance instance)
          Predicts the class memberships for a given instance.
 double Evaluation.evaluateModelOnce(Classifier classifier, Instance instance)
          Evaluates the classifier on a single instance.
 double Evaluation.evaluateModelOnce(double[] dist, Instance instance)
          Evaluates the supplied distribution on a single instance.
 void Evaluation.evaluateModelOnce(double prediction, Instance instance)
          Evaluates the supplied prediction on a single instance.
 double Evaluation.evaluateModelOnceAndRecordPrediction(Classifier classifier, Instance instance)
          Evaluates the classifier on a single instance and records the prediction.
 double Evaluation.evaluateModelOnceAndRecordPrediction(double[] dist, Instance instance)
          Evaluates the supplied distribution on a single instance.
 double Evaluation.evaluationForSingleInstance(double[] dist, Instance instance, boolean storePredictions)
          Evaluates the supplied distribution on a single instance.
 double[] CostMatrix.expectedCosts(double[] classProbs, Instance inst)
          Calculates the expected misclassification cost for each possible class value, given class probability estimates.
 double CostMatrix.getElement(int rowIndex, int columnIndex, Instance inst)
          Return the value of a cell as a double.
 double CostMatrix.getMaxCost(int classVal, Instance inst)
          Gets the maximum cost for a particular class value.
 double ConditionalDensityEstimator.logDensity(Instance instance, double value)
          Returns natural logarithm of density estimate for given value based on given instance.
 double[][] IntervalEstimator.predictIntervals(Instance inst, double confidenceLevel)
          Returns an N * 2 array, where N is the number of prediction intervals.
 void UpdateableClassifier.updateClassifier(Instance instance)
          Updates a classifier using the given instance.
 void Evaluation.updatePriors(Instance instance)
          Updates the class prior probabilities or the mean respectively (when incrementally training).
 

Uses of Instance in weka.classifiers.bayes
 

Methods in weka.classifiers.bayes with parameters of type Instance
 double[] BayesNet.countsForInstance(Instance instance)
          Calculates the counts for Dirichlet distribution for the class membership probabilities for the given test instance.
 double[] NaiveBayesMultinomialText.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] BayesNet.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] NaiveBayesMultinomialUpdateable.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] NaiveBayesMultinomial.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] NaiveBayes.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 void NaiveBayesMultinomialText.updateClassifier(Instance instance)
          Updates the classifier with the given instance.
 void BayesNet.updateClassifier(Instance instance)
          Updates the classifier with the given instance.
 void NaiveBayesMultinomialUpdateable.updateClassifier(Instance instance)
          Updates the classifier with the given instance.
 void NaiveBayes.updateClassifier(Instance instance)
          Updates the classifier with the given instance.
 

Uses of Instance in weka.classifiers.bayes.net
 

Fields in weka.classifiers.bayes.net declared as Instance
 Instance[] ADNode.m_Instances
          list of Instance children (either m_Instances or m_VaryNodes is instantiated)
 

Uses of Instance in weka.classifiers.bayes.net.estimate
 

Methods in weka.classifiers.bayes.net.estimate with parameters of type Instance
 double[] MultiNomialBMAEstimator.distributionForInstance(BayesNet bayesNet, Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] SimpleEstimator.distributionForInstance(BayesNet bayesNet, Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] BayesNetEstimator.distributionForInstance(BayesNet bayesNet, Instance instance)
          Calculates the class membership probabilities for the given test instance.
 void MultiNomialBMAEstimator.updateClassifier(BayesNet bayesNet, Instance instance)
          Updates the classifier with the given instance.
 void SimpleEstimator.updateClassifier(BayesNet bayesNet, Instance instance)
          Updates the classifier with the given instance.
 void BMAEstimator.updateClassifier(BayesNet bayesNet, Instance instance)
          Updates the classifier with the given instance.
 void BayesNetEstimator.updateClassifier(BayesNet bayesNet, Instance instance)
          Updates the classifier with the given instance.
 

Uses of Instance in weka.classifiers.evaluation
 

Methods in weka.classifiers.evaluation with parameters of type Instance
 Prediction EvaluationUtils.getPrediction(Classifier classifier, Instance test)
          Generate a single prediction for a test instance given the pre-trained classifier.
 

Uses of Instance in weka.classifiers.evaluation.output.prediction
 

Methods in weka.classifiers.evaluation.output.prediction with parameters of type Instance
 void AbstractOutput.printClassification(Classifier classifier, Instance inst, int index)
          Prints the classification to the buffer.
 

Uses of Instance in weka.classifiers.functions
 

Methods in weka.classifiers.functions with parameters of type Instance
 double LinearRegression.classifyInstance(Instance instance)
          Classifies the given instance using the linear regression function.
 double GaussianProcesses.classifyInstance(Instance inst)
          Classifies a given instance.
 double SimpleLinearRegression.classifyInstance(Instance inst)
          Generate a prediction for the supplied instance.
 double SMOreg.classifyInstance(Instance instance)
          Classifies the given instance using the linear regression function.
 double[] SGD.distributionForInstance(Instance inst)
          Computes the distribution for a given instance
 double[] Logistic.distributionForInstance(Instance instance)
          Computes the distribution for a given instance
 double[] SimpleLogistic.distributionForInstance(Instance inst)
          Returns class probabilities for an instance.
 double[] MultilayerPerceptron.distributionForInstance(Instance i)
          Call this function to predict the class of an instance once a classification model has been built with the buildClassifier call.
 double[] VotedPerceptron.distributionForInstance(Instance inst)
          Outputs the distribution for the given output.
 double[] SGDText.distributionForInstance(Instance inst)
           
 double[] SMO.distributionForInstance(Instance inst)
          Estimates class probabilities for given instance.
 double GaussianProcesses.getStandardDeviation(Instance inst)
          Gives standard deviation of the prediction at the given instance.
 double GaussianProcesses.logDensity(Instance inst, double value)
          Returns natural logarithm of density estimate for given value based on given instance.
 int[] SMO.obtainVotes(Instance inst)
          Returns an array of votes for the given instance.
 double[][] GaussianProcesses.predictIntervals(Instance inst, double confidenceLevel)
          Computes a prediction interval for the given instance and confidence level.
 double SMO.BinarySMO.SVMOutput(int index, Instance inst)
          Computes SVM output for given instance.
 void SGD.updateClassifier(Instance instance)
          Updates the classifier with the given instance.
 void SGDText.updateClassifier(Instance instance)
          Updates the classifier with the given instance.
 

Uses of Instance in weka.classifiers.functions.supportVector
 

Methods in weka.classifiers.functions.supportVector with parameters of type Instance
 double PrecomputedKernelMatrixKernel.eval(int id1, int id2, Instance inst1)
           
 double CachedKernel.eval(int id1, int id2, Instance inst1)
          Implements the abstract function of Kernel using the cache.
 double NormalizedPolyKernel.eval(int id1, int id2, Instance inst1)
          Computes the result of the kernel function for two instances.
abstract  double Kernel.eval(int id1, int id2, Instance inst1)
          Computes the result of the kernel function for two instances.
 double StringKernel.eval(int id1, int id2, Instance inst1)
          Computes the result of the kernel function for two instances.
 double RegOptimizer.SVMOutput(Instance inst)
           
 

Uses of Instance in weka.classifiers.lazy
 

Methods in weka.classifiers.lazy with parameters of type Instance
 double[] LWL.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] KStar.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] IBk.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 void LWL.updateClassifier(Instance instance)
          Adds the supplied instance to the training set.
 void KStar.updateClassifier(Instance instance)
          Adds the supplied instance to the training set
 void IBk.updateClassifier(Instance instance)
          Adds the supplied instance to the training set.
 

Uses of Instance in weka.classifiers.lazy.kstar
 

Constructors in weka.classifiers.lazy.kstar with parameters of type Instance
KStarNominalAttribute(Instance test, Instance train, int attrIndex, Instances trainSet, int[][] randClassCol, KStarCache cache)
          Constructor
KStarNumericAttribute(Instance test, Instance train, int attrIndex, Instances trainSet, int[][] randClassCols, KStarCache cache)
          Constructor
 

Uses of Instance in weka.classifiers.meta
 

Methods in weka.classifiers.meta with parameters of type Instance
 double AdditiveRegression.classifyInstance(Instance inst)
          Classify an instance.
 double RegressionByDiscretization.classifyInstance(Instance instance)
          Returns a predicted class for the test instance.
 double Vote.classifyInstance(Instance instance)
          Classifies the given test instance.
 double[] ClassificationViaRegression.distributionForInstance(Instance inst)
          Returns the distribution for an instance.
 double[] FilteredClassifier.distributionForInstance(Instance instance)
          Classifies a given instance after filtering.
 double[] AdaBoostM1.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] Stacking.distributionForInstance(Instance instance)
          Returns class probabilities.
 double[] CVParameterSelection.distributionForInstance(Instance instance)
          Predicts the class distribution for the given test instance.
 double[] MultiScheme.distributionForInstance(Instance instance)
          Returns class probabilities.
 double[] MultiClassClassifierUpdateable.distributionForInstance(Instance inst)
          Returns the distribution for an instance.
 double[] MultiClassClassifier.distributionForInstance(Instance inst)
          Returns the distribution for an instance.
 double[] LogitBoost.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] RandomSubSpace.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] Vote.distributionForInstance(Instance instance)
          Classifies a given instance using the selected combination rule.
 double[] AttributeSelectedClassifier.distributionForInstance(Instance instance)
          Classifies a given instance after attribute selection
 double[] RandomCommittee.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] Bagging.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] CostSensitiveClassifier.distributionForInstance(Instance instance)
          Returns class probabilities.
 double[] MultiClassClassifier.individualPredictions(Instance inst)
          Returns the individual predictions of the base classifiers for an instance.
 double RegressionByDiscretization.logDensity(Instance instance, double value)
          Returns natural logarithm of density estimate for given value based on given instance.
 double[][] RegressionByDiscretization.predictIntervals(Instance instance, double confidenceLevel)
          Returns an N * 2 array, where N is the number of prediction intervals.
 void MultiClassClassifierUpdateable.updateClassifier(Instance instance)
          Updates the classifier with the given instance.
 

Uses of Instance in weka.classifiers.misc
 

Methods in weka.classifiers.misc that return Instance
 Instance InputMappedClassifier.constructMappedInstance(Instance incoming)
           
 

Methods in weka.classifiers.misc with parameters of type Instance
 double InputMappedClassifier.classifyInstance(Instance inst)
           
 Instance InputMappedClassifier.constructMappedInstance(Instance incoming)
           
 double[] InputMappedClassifier.distributionForInstance(Instance inst)
           
 double[] SerializedClassifier.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 

Uses of Instance in weka.classifiers.pmml.consumer
 

Methods in weka.classifiers.pmml.consumer with parameters of type Instance
 double[] NeuralNetwork.distributionForInstance(Instance inst)
          Classifies the given test instance.
 double[] TreeModel.distributionForInstance(Instance inst)
          Classifies the given test instance.
 double[] SupportVectorMachineModel.distributionForInstance(Instance inst)
          Classifies the given test instance.
 double[] RuleSetModel.distributionForInstance(Instance inst)
          Classifies the given test instance.
 double[] Regression.distributionForInstance(Instance inst)
          Classifies the given test instance.
 double[] GeneralRegression.distributionForInstance(Instance inst)
          Classifies the given test instance.
 

Uses of Instance in weka.classifiers.rules
 

Methods in weka.classifiers.rules with parameters of type Instance
 double PART.classifyInstance(Instance instance)
          Classifies an instance.
 double ZeroR.classifyInstance(Instance instance)
          Classifies a given instance.
 double OneR.classifyInstance(Instance inst)
          Classifies a given instance.
abstract  boolean Rule.covers(Instance datum)
          Whether the instance covered by this rule
 double[] JRip.distributionForInstance(Instance datum)
          Classify the test instance with the rule learner and provide the class distributions
 double[] DecisionTable.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] PART.distributionForInstance(Instance instance)
          Returns class probabilities for an instance.
 double[] ZeroR.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 

Constructors in weka.classifiers.rules with parameters of type Instance
DecisionTableHashKey(Instance t, int numAtts, boolean ignoreClass)
          Constructor for a hashKey
 

Uses of Instance in weka.classifiers.rules.part
 

Methods in weka.classifiers.rules.part with parameters of type Instance
 double MakeDecList.classifyInstance(Instance instance)
          Classifies an instance.
 double ClassifierDecList.classifyInstance(Instance instance)
          Classifies an instance.
 double[] MakeDecList.distributionForInstance(Instance instance)
          Returns the class distribution for an instance.
 double[] ClassifierDecList.distributionForInstance(Instance instance)
          Returns class probabilities for a weighted instance.
 double ClassifierDecList.weight(Instance instance)
          Returns the weight a rule assigns to an instance.
 

Uses of Instance in weka.classifiers.trees
 

Methods in weka.classifiers.trees with parameters of type Instance
 double J48.classifyInstance(Instance instance)
          Classifies an instance.
 double LMT.classifyInstance(Instance instance)
          Classifies an instance.
 double[] DecisionStump.distributionForInstance(Instance instance)
          Calculates the class membership probabilities for the given test instance.
 double[] REPTree.distributionForInstance(Instance instance)
          Computes class distribution of an instance using the tree.
 double[] RandomForest.distributionForInstance(Instance instance)
          Returns the class probability distribution for an instance.
 double[] RandomTree.distributionForInstance(Instance instance)
          Computes class distribution of an instance using the decision tree.
 double[] J48.distributionForInstance(Instance instance)
          Returns class probabilities for an instance.
 double[] LMT.distributionForInstance(Instance instance)
          Returns class probabilities for an instance.
 

Uses of Instance in weka.classifiers.trees.j48
 

Methods in weka.classifiers.trees.j48 with parameters of type Instance
 void Distribution.add(int bagIndex, Instance instance)
          Adds given instance to given bag.
 void Distribution.addWeights(Instance instance, double[] weights)
          Adds given instance to all bags weighting it according to given weights.
 double ClassifierSplitModel.classifyInstance(Instance instance)
          Classifies a given instance.
 double ClassifierTree.classifyInstance(Instance instance)
          Classifies an instance.
 double NBTreeNoSplit.classProb(int classIndex, Instance instance, int theSubset)
          Return the probability for a class value
 double NBTreeSplit.classProb(int classIndex, Instance instance, int theSubset)
          Return the probability for a class value
 double ClassifierSplitModel.classProb(int classIndex, Instance instance, int theSubset)
          Gets class probability for instance.
 double BinC45Split.classProb(int classIndex, Instance instance, int theSubset)
          Gets class probability for instance.
 double C45Split.classProb(int classIndex, Instance instance, int theSubset)
          Gets class probability for instance.
 double ClassifierSplitModel.classProbLaplace(int classIndex, Instance instance, int theSubset)
          Gets class probability for instance.
 void Distribution.del(int bagIndex, Instance instance)
          Deletes given instance from given bag.
 double[] ClassifierTree.distributionForInstance(Instance instance, boolean useLaplace)
          Returns class probabilities for a weighted instance.
 void Distribution.shift(int from, int to, Instance instance)
          Shifts given instance from one bag to another one.
 void Distribution.sub(int bagIndex, Instance instance)
          Subtracts given instance from given bag.
 double[] NBTreeNoSplit.weights(Instance instance)
          Always returns null because there is only one subset.
 double[] NoSplit.weights(Instance instance)
          Always returns null because there is only one subset.
 double[] NBTreeSplit.weights(Instance instance)
          Returns weights if instance is assigned to more than one subset.
abstract  double[] ClassifierSplitModel.weights(Instance instance)
          Returns weights if instance is assigned to more than one subset.
 double[] BinC45Split.weights(Instance instance)
          Returns weights if instance is assigned to more than one subset.
 double[] C45Split.weights(Instance instance)
          Returns weights if instance is assigned to more than one subset.
 int NBTreeNoSplit.whichSubset(Instance instance)
          Always returns 0 because only there is only one subset.
 int NoSplit.whichSubset(Instance instance)
          Always returns 0 because only there is only one subset.
 int NBTreeSplit.whichSubset(Instance instance)
          Returns index of subset instance is assigned to.
abstract  int ClassifierSplitModel.whichSubset(Instance instance)
          Returns index of subset instance is assigned to.
 int BinC45Split.whichSubset(Instance instance)
          Returns index of subset instance is assigned to.
 int C45Split.whichSubset(Instance instance)
          Returns index of subset instance is assigned to.
 

Uses of Instance in weka.classifiers.trees.lmt
 

Methods in weka.classifiers.trees.lmt with parameters of type Instance
 double[] LogisticBase.distributionForInstance(Instance instance)
          Returns class probabilities for an instance.
 double[] LMTNode.distributionForInstance(Instance instance)
          Returns the class probabilities for an instance given by the logistic model tree.
 double[] LMTNode.modelDistributionForInstance(Instance instance)
          Returns the class probabilities for an instance according to the logistic model at the node.
 double[] ResidualSplit.weights(Instance instance)
          Method not in use
 int ResidualSplit.whichSubset(Instance instance)
           
 

Uses of Instance in weka.classifiers.trees.m5
 

Methods in weka.classifiers.trees.m5 with parameters of type Instance
 double M5Base.classifyInstance(Instance inst)
          Calculates a prediction for an instance using a set of rules or an M5 model tree
 double Rule.classifyInstance(Instance instance)
          Calculates a prediction for an instance using this rule or M5 model tree
 double RuleNode.classifyInstance(Instance inst)
          Classify an instance using this node.
 double PreConstructedLinearModel.classifyInstance(Instance inst)
          Predicts the class of the supplied instance using the linear model.
 

Uses of Instance in weka.clusterers
 

Methods in weka.clusterers with parameters of type Instance
 void Cobweb.addInstance(Instance newInstance)
          Deprecated. updateClusterer(Instance) should be used instead
 int Cobweb.clusterInstance(Instance instance)
          Classifies a given instance.
 int AbstractClusterer.clusterInstance(Instance instance)
          Classifies a given instance.
 int FarthestFirst.clusterInstance(Instance instance)
          Classifies a given instance.
 int HierarchicalClusterer.clusterInstance(Instance instance)
           
 int SimpleKMeans.clusterInstance(Instance instance)
          Classifies a given instance.
 int Clusterer.clusterInstance(Instance instance)
          Classifies a given instance.
 double[] AbstractClusterer.distributionForInstance(Instance instance)
          Predicts the cluster memberships for a given instance.
 double[] FilteredClusterer.distributionForInstance(Instance instance)
          Classifies a given instance after filtering.
 double[] HierarchicalClusterer.distributionForInstance(Instance instance)
           
 double[] AbstractDensityBasedClusterer.distributionForInstance(Instance instance)
          Returns the cluster probability distribution for an instance.
 double[] Clusterer.distributionForInstance(Instance instance)
          Predicts the cluster memberships for a given instance.
 double DensityBasedClusterer.logDensityForInstance(Instance instance)
          Computes the density for a given instance.
 double AbstractDensityBasedClusterer.logDensityForInstance(Instance instance)
          Computes the density for a given instance.
 double[] EM.logDensityPerClusterForInstance(Instance inst)
          Computes the log of the conditional density (per cluster) for a given instance.
 double[] MakeDensityBasedClusterer.logDensityPerClusterForInstance(Instance inst)
          Computes the log of the conditional density (per cluster) for a given instance.
 double[] DensityBasedClusterer.logDensityPerClusterForInstance(Instance instance)
          Computes the log of the conditional density (per cluster) for a given instance.
abstract  double[] AbstractDensityBasedClusterer.logDensityPerClusterForInstance(Instance instance)
          Computes the log of the conditional density (per cluster) for a given instance.
 double[] DensityBasedClusterer.logJointDensitiesForInstance(Instance inst)
          Returns the logs of the joint densities for a given instance.
 double[] AbstractDensityBasedClusterer.logJointDensitiesForInstance(Instance inst)
          Returns the logs of the joint densities for a given instance.
 void Cobweb.updateClusterer(Instance newInstance)
          Adds an instance to the clusterer.
 void UpdateableClusterer.updateClusterer(Instance newInstance)
          Adds an instance to the clusterer.
 

Constructors in weka.clusterers with parameters of type Instance
Cobweb.CNode(int numAttributes, Instance leafInstance)
          Creates a new leaf CNode instance.
 

Uses of Instance in weka.core
 

Classes in weka.core that implement Instance
 class AbstractInstance
          Abstract class providing common functionality for the original instance implementations.
 class BinarySparseInstance
          Class for storing a binary-data-only instance as a sparse vector.
 class DenseInstance
          Class for handling an instance.
 class SparseInstance
          Class for storing an instance as a sparse vector.
 

Methods in weka.core that return Instance
 Instance Instances.firstInstance()
          Returns the first instance in the set.
 Instance Instances.get(int index)
          Returns the instance at the given position.
 Instance AlgVector.getAsInstance(Instances model, Random random)
          Gets the elements of the vector as an instance.
 Instance Instances.instance(int index)
          Returns the instance at the given position.
 Instance Instances.lastInstance()
          Returns the last instance in the set.
 Instance BinarySparseInstance.mergeInstance(Instance inst)
          Merges this instance with the given instance and returns the result.
 Instance SparseInstance.mergeInstance(Instance inst)
          Merges this instance with the given instance and returns the result.
 Instance Instance.mergeInstance(Instance inst)
          Merges this instance with the given instance and returns the result.
 Instance DenseInstance.mergeInstance(Instance inst)
          Merges this instance with the given instance and returns the result.
 Instance Instances.remove(int index)
          Removes the instance at the given position.
 Instance Instances.set(int index, Instance instance)
          Replaces the instance at the given position.
 

Methods in weka.core with parameters of type Instance
 boolean Instances.add(Instance instance)
          Adds one instance to the end of the set.
 void Instances.add(int index, Instance instance)
          Adds one instance to the end of the set.
 boolean Instances.checkInstance(Instance instance)
          Checks if the given instance is compatible with this dataset.
 int EuclideanDistance.closestPoint(Instance instance, Instances allPoints, int[] pointList)
          Returns the index of the closest point to the current instance.
 int InstanceComparator.compare(Instance inst1, Instance inst2)
          compares the two instances, returns -1 if o1 is smaller than o2, 0 if equal and +1 if greater.
static void RelationalLocator.copyRelationalValues(Instance instance, boolean instSrcCompat, Instances srcDataset, AttributeLocator srcLoc, Instances destDataset, AttributeLocator destLoc)
          Takes relational values referenced by an Instance and copies them from a source dataset to a destination dataset.
static void RelationalLocator.copyRelationalValues(Instance inst, Instances destDataset, AttributeLocator strAtts)
          Copies relational values contained in the instance copied to a new dataset.
static void StringLocator.copyStringValues(Instance instance, boolean instSrcCompat, Instances srcDataset, AttributeLocator srcLoc, Instances destDataset, AttributeLocator destLoc)
          Takes string values referenced by an Instance and copies them from a source dataset to a destination dataset.
static void StringLocator.copyStringValues(Instance inst, Instances destDataset, AttributeLocator strAtts)
          Copies string values contained in the instance copied to a new dataset.
 double EuclideanDistance.distance(Instance first, Instance second)
          Calculates the distance between two instances.
 double MinkowskiDistance.distance(Instance first, Instance second)
          Calculates the distance between two instances.
 double NormalizableDistance.distance(Instance first, Instance second)
          Calculates the distance between two instances.
 double DistanceFunction.distance(Instance first, Instance second)
          Calculates the distance between two instances.
 double NormalizableDistance.distance(Instance first, Instance second, double cutOffValue)
          Calculates the distance between two instances.
 double DistanceFunction.distance(Instance first, Instance second, double cutOffValue)
          Calculates the distance between two instances.
 double NormalizableDistance.distance(Instance first, Instance second, double cutOffValue, PerformanceStats stats)
          Calculates the distance between two instances.
 double DistanceFunction.distance(Instance first, Instance second, double cutOffValue, PerformanceStats stats)
          Calculates the distance between two instances.
 double EuclideanDistance.distance(Instance first, Instance second, PerformanceStats stats)
          Calculates the distance (or similarity) between two instances.
 double MinkowskiDistance.distance(Instance first, Instance second, PerformanceStats stats)
          Calculates the distance (or similarity) between two instances.
 double NormalizableDistance.distance(Instance first, Instance second, PerformanceStats stats)
          Calculates the distance between two instances.
 double DistanceFunction.distance(Instance first, Instance second, PerformanceStats stats)
          Calculates the distance between two instances.
 boolean AbstractInstance.equalHeaders(Instance inst)
          Tests if the headers of two instances are equivalent.
 boolean Instance.equalHeaders(Instance inst)
          Tests if the headers of two instances are equivalent.
 String AbstractInstance.equalHeadersMsg(Instance inst)
          Checks if the headers of two instances are equivalent.
 String Instance.equalHeadersMsg(Instance inst)
          Checks if the headers of two instances are equivalent.
 double AttributeExpression.evaluateExpression(Instance instance)
          Evaluate the expression using the supplied Instance.
 boolean NormalizableDistance.inRanges(Instance instance, double[][] ranges)
          Test if an instance is within the given ranges.
 Instance BinarySparseInstance.mergeInstance(Instance inst)
          Merges this instance with the given instance and returns the result.
 Instance SparseInstance.mergeInstance(Instance inst)
          Merges this instance with the given instance and returns the result.
 Instance Instance.mergeInstance(Instance inst)
          Merges this instance with the given instance and returns the result.
 Instance DenseInstance.mergeInstance(Instance inst)
          Merges this instance with the given instance and returns the result.
 Instance Instances.set(int index, Instance instance)
          Replaces the instance at the given position.
 void NormalizableDistance.update(Instance ins)
          Update the distance function (if necessary) for the newly added instance.
 void DistanceFunction.update(Instance ins)
          Update the distance function (if necessary) for the newly added instance.
 void NormalizableDistance.updateRanges(Instance instance)
          Update the ranges if a new instance comes.
 double[][] NormalizableDistance.updateRanges(Instance instance, double[][] ranges)
          Updates the ranges given a new instance.
 void NormalizableDistance.updateRanges(Instance instance, int numAtt, double[][] ranges)
          Updates the minimum and maximum and width values for all the attributes based on a new instance.
 void NormalizableDistance.updateRangesFirst(Instance instance, int numAtt, double[][] ranges)
          Used to initialize the ranges.
 boolean EuclideanDistance.valueIsSmallerEqual(Instance instance, int dim, double value)
          Returns true if the value of the given dimension is smaller or equal the value to be compared with.
 

Constructors in weka.core with parameters of type Instance
AlgVector(Instance instance)
          Constructs a vector using an instance.
BinarySparseInstance(Instance instance)
          Constructor that generates a sparse instance from the given instance.
DenseInstance(Instance instance)
          Constructor that copies the attribute values and the weight from the given instance.
SparseInstance(Instance instance)
          Constructor that generates a sparse instance from the given instance.
 

Uses of Instance in weka.core.converters
 

Methods in weka.core.converters that return Instance
 Instance JSONLoader.getNextInstance(Instances structure)
          JSONLoader is unable to process a data set incrementally.
 Instance DatabaseLoader.getNextInstance(Instances structure)
          Read the data set incrementally---get the next instance in the data set or returns null if there are no more instances to get.
 Instance LibSVMLoader.getNextInstance(Instances structure)
          LibSVmLoader is unable to process a data set incrementally.
 Instance ArffLoader.getNextInstance(Instances structure)
          Read the data set incrementally---get the next instance in the data set or returns null if there are no more instances to get.
 Instance Loader.getNextInstance(Instances structure)
          Read the data set incrementally---get the next instance in the data set or returns null if there are no more instances to get.
 Instance C45Loader.getNextInstance(Instances structure)
          Read the data set incrementally---get the next instance in the data set or returns null if there are no more instances to get.
 Instance MatlabLoader.getNextInstance(Instances structure)
          MatlabLoader is unable to process a data set incrementally.
 Instance XRFFLoader.getNextInstance(Instances structure)
          XRFFLoader is unable to process a data set incrementally.
 Instance TextDirectoryLoader.getNextInstance(Instances structure)
          TextDirectoryLoader is unable to process a data set incrementally.
 Instance SVMLightLoader.getNextInstance(Instances structure)
          SVMLightLoader is unable to process a data set incrementally.
abstract  Instance AbstractLoader.getNextInstance(Instances structure)
           
 Instance CSVLoader.getNextInstance(Instances structure)
          CSVLoader is unable to process a data set incrementally.
 Instance SerializedInstancesLoader.getNextInstance(Instances structure)
          Read the data set incrementally---get the next instance in the data set or returns null if there are no more instances to get.
 Instance ConverterUtils.DataSource.nextElement(Instances dataset)
          returns the next element and sets the specified dataset, null if none available.
 Instance ArffLoader.ArffReader.readInstance(Instances structure)
          Reads a single instance using the tokenizer and returns it.
 Instance ArffLoader.ArffReader.readInstance(Instances structure, boolean flag)
          Reads a single instance using the tokenizer and returns it.
 

Methods in weka.core.converters with parameters of type Instance
 void ArffSaver.writeIncremental(Instance inst)
          Saves an instances incrementally.
 void CSVSaver.writeIncremental(Instance inst)
          Saves an instances incrementally.
 void AbstractSaver.writeIncremental(Instance i)
          Method for incremental saving.
 void MatlabSaver.writeIncremental(Instance inst)
          Saves an instances incrementally.
 void LibSVMSaver.writeIncremental(Instance inst)
          Saves an instances incrementally.
 void SVMLightSaver.writeIncremental(Instance inst)
          Saves an instances incrementally.
 void C45Saver.writeIncremental(Instance inst)
          Saves an instances incrementally.
 void Saver.writeIncremental(Instance inst)
          Writes to a destination in incremental mode.
 void DatabaseSaver.writeIncremental(Instance inst)
          Saves an instances incrementally.
 

Uses of Instance in weka.core.neighboursearch
 

Methods in weka.core.neighboursearch that return Instance
 Instance KDTree.nearestNeighbour(Instance target)
          Returns the nearest neighbour of the supplied target instance.
 Instance LinearNNSearch.nearestNeighbour(Instance target)
          Returns the nearest instance in the current neighbourhood to the supplied instance.
abstract  Instance NearestNeighbourSearch.nearestNeighbour(Instance target)
          Returns the nearest instance in the current neighbourhood to the supplied instance.
 Instance CoverTree.nearestNeighbour(Instance target)
          Returns the NN instance of a given target instance, from among the previously supplied training instances.
 Instance BallTree.nearestNeighbour(Instance target)
          Returns the nearest instance in the current neighbourhood to the supplied instance.
 Instance CoverTree.CoverTreeNode.p()
          Returns the instance represented by the node.
 

Methods in weka.core.neighboursearch with parameters of type Instance
 void KDTree.addInstanceInfo(Instance instance)
          Adds one instance to KDTree loosly.
 void LinearNNSearch.addInstanceInfo(Instance ins)
          Adds the given instance info.
 void NearestNeighbourSearch.addInstanceInfo(Instance ins)
          Adds information from the given instance without modifying the datastructure a lot.
 void CoverTree.addInstanceInfo(Instance ins)
          Adds the given instance info.
 void BallTree.addInstanceInfo(Instance ins)
          Adds the given instance's info.
 Instances KDTree.kNearestNeighbours(Instance target, int k)
          Returns the k nearest neighbours of the supplied instance.
 Instances LinearNNSearch.kNearestNeighbours(Instance target, int kNN)
          Returns k nearest instances in the current neighbourhood to the supplied instance.
abstract  Instances NearestNeighbourSearch.kNearestNeighbours(Instance target, int k)
          Returns k nearest instances in the current neighbourhood to the supplied instance.
 Instances CoverTree.kNearestNeighbours(Instance target, int k)
          Returns k-NNs of a given target instance, from among the previously supplied training instances (supplied through setInstances method) P.S.: May return more than k-NNs if more one instances have the same distance to the target as the kth NN.
 Instances BallTree.kNearestNeighbours(Instance target, int k)
          Returns k nearest instances in the current neighbourhood to the supplied instance.
 Instance KDTree.nearestNeighbour(Instance target)
          Returns the nearest neighbour of the supplied target instance.
 Instance LinearNNSearch.nearestNeighbour(Instance target)
          Returns the nearest instance in the current neighbourhood to the supplied instance.
abstract  Instance NearestNeighbourSearch.nearestNeighbour(Instance target)
          Returns the nearest instance in the current neighbourhood to the supplied instance.
 Instance CoverTree.nearestNeighbour(Instance target)
          Returns the NN instance of a given target instance, from among the previously supplied training instances.
 Instance BallTree.nearestNeighbour(Instance target)
          Returns the nearest instance in the current neighbourhood to the supplied instance.
 void KDTree.update(Instance instance)
          Adds one instance to the KDTree.
 void LinearNNSearch.update(Instance ins)
          Updates the LinearNNSearch to cater for the new added instance.
abstract  void NearestNeighbourSearch.update(Instance ins)
          Updates the NearNeighbourSearch algorithm for the new added instance.
 void CoverTree.update(Instance ins)
          Adds an instance to the cover tree.
 void BallTree.update(Instance ins)
          Adds one instance to the BallTree.
 

Uses of Instance in weka.core.neighboursearch.balltrees
 

Methods in weka.core.neighboursearch.balltrees that return Instance
static Instance BallNode.calcCentroidPivot(int[] instList, Instances insts)
          Calculates the centroid pivot of a node.
static Instance BallNode.calcCentroidPivot(int start, int end, int[] instList, Instances insts)
          Calculates the centroid pivot of a node.
static Instance BallNode.calcPivot(BallNode child1, BallNode child2, Instances insts)
          Calculates the centroid pivot of a node based on its two child nodes (if merging two nodes).
 Instance BottomUpConstructor.calcPivot(weka.core.neighboursearch.balltrees.BottomUpConstructor.TempNode node1, weka.core.neighboursearch.balltrees.BottomUpConstructor.TempNode node2, Instances insts)
          Calculates the centroid pivot of a node based on its two child nodes.
 Instance MiddleOutConstructor.calcPivot(weka.core.neighboursearch.balltrees.MiddleOutConstructor.MyIdxList list1, weka.core.neighboursearch.balltrees.MiddleOutConstructor.MyIdxList list2, Instances insts)
          Calculates the centroid pivot of a node based on the list of points that it contains (tbe two lists of its children are provided).
 Instance MiddleOutConstructor.calcPivot(weka.core.neighboursearch.balltrees.MiddleOutConstructor.TempNode node1, weka.core.neighboursearch.balltrees.MiddleOutConstructor.TempNode node2, Instances insts)
          /** Calculates the centroid pivot of a node based on its two child nodes (if merging two nodes).
 Instance BallNode.getPivot()
          Returns the pivot/centre of the node's ball.
 

Methods in weka.core.neighboursearch.balltrees with parameters of type Instance
 int[] BottomUpConstructor.addInstance(BallNode node, Instance inst)
          Adds an instance to the ball tree.
abstract  int[] BallTreeConstructor.addInstance(BallNode node, Instance inst)
          Adds an instance to the ball tree.
 int[] MiddleOutConstructor.addInstance(BallNode node, Instance inst)
          Adds an instance to the tree.
 int[] TopDownConstructor.addInstance(BallNode node, Instance inst)
          Adds an instance to the ball tree.
static double BallNode.calcRadius(BallNode child1, BallNode child2, Instance pivot, DistanceFunction distanceFunction)
          Calculates the radius of a node based on its two child nodes (if merging two nodes).
static double BallNode.calcRadius(int[] instList, Instances insts, Instance pivot, DistanceFunction distanceFunction)
          Calculates the radius of node.
static double BallNode.calcRadius(int start, int end, int[] instList, Instances insts, Instance pivot, DistanceFunction distanceFunction)
          Calculates the radius of a node.
 double MiddleOutConstructor.calcRadius(weka.core.neighboursearch.balltrees.MiddleOutConstructor.MyIdxList list1, weka.core.neighboursearch.balltrees.MiddleOutConstructor.MyIdxList list2, Instance pivot, Instances insts)
          Calculates the radius of a node based on the list of points that it contains (the two lists of its children are provided).
 void BallNode.setPivot(Instance pivot)
          Sets the pivot/centre of this nodes ball.
 

Constructors in weka.core.neighboursearch.balltrees with parameters of type Instance
BallNode(int start, int end, int nodeNumber, Instance pivot, double radius)
          Creates a new instance of BallNode.
 

Uses of Instance in weka.core.pmml
 

Methods in weka.core.pmml with parameters of type Instance
 double[] MappingInfo.instanceToSchema(Instance inst, MiningSchema miningSchema)
          Convert an Instance to an array of values that matches the format of the mining schema.
 

Uses of Instance in weka.datagenerators
 

Methods in weka.datagenerators that return Instance
abstract  Instance DataGenerator.generateExample()
          Generates one example of the dataset.
 

Methods in weka.datagenerators with parameters of type Instance
 boolean Test.passesTest(Instance inst)
          Determines whether an instance passes the test.
 

Uses of Instance in weka.datagenerators.classifiers.classification
 

Methods in weka.datagenerators.classifiers.classification that return Instance
 Instance LED24.generateExample()
          Generates one example of the dataset.
 Instance BayesNet.generateExample()
          Generates one example of the dataset.
 Instance RandomRBF.generateExample()
          Generates one example of the dataset.
 Instance RDG1.generateExample()
          Generate an example of the dataset dataset.
 Instance Agrawal.generateExample()
          Generates one example of the dataset.
 

Uses of Instance in weka.datagenerators.classifiers.regression
 

Methods in weka.datagenerators.classifiers.regression that return Instance
 Instance Expression.generateExample()
          Generates one example of the dataset.
 Instance MexicanHat.generateExample()
          Generates one example of the dataset.
 

Uses of Instance in weka.datagenerators.clusterers
 

Methods in weka.datagenerators.clusterers that return Instance
 Instance BIRCHCluster.generateExample()
          Generate an example of the dataset.
 Instance SubspaceCluster.generateExample()
          Generate an example of the dataset.
 

Uses of Instance in weka.experiment
 

Methods in weka.experiment with parameters of type Instance
 PairedStats Tester.calculateStatistics(Instance datasetSpecifier, int resultset1Index, int resultset2Index, int comparisonColumn)
          Computes a paired t-test comparison for a specified dataset between two resultsets.
 PairedStats PairedCorrectedTTester.calculateStatistics(Instance datasetSpecifier, int resultset1Index, int resultset2Index, int comparisonColumn)
          Computes a paired t-test comparison for a specified dataset between two resultsets.
 PairedStats PairedTTester.calculateStatistics(Instance datasetSpecifier, int resultset1Index, int resultset2Index, int comparisonColumn)
          Computes a paired t-test comparison for a specified dataset between two resultsets.
 

Uses of Instance in weka.filters
 

Methods in weka.filters that return Instance
 Instance Filter.output()
          Output an instance after filtering and remove from the output queue.
 Instance Filter.outputPeek()
          Output an instance after filtering but do not remove from the output queue.
 

Methods in weka.filters with parameters of type Instance
 boolean AllFilter.input(Instance instance)
          Input an instance for filtering.
 boolean SimpleStreamFilter.input(Instance instance)
          Input an instance for filtering.
 boolean SimpleBatchFilter.input(Instance instance)
          Input an instance for filtering.
 boolean Filter.input(Instance instance)
          Input an instance for filtering.
 

Uses of Instance in weka.filters.supervised.attribute
 

Methods in weka.filters.supervised.attribute with parameters of type Instance
 boolean NominalToBinary.input(Instance instance)
          Input an instance for filtering.
 boolean AttributeSelection.input(Instance instance)
          Input an instance for filtering.
 boolean ClassOrder.input(Instance instance)
          Input an instance for filtering.
 boolean Discretize.input(Instance instance)
          Input an instance for filtering.
 

Uses of Instance in weka.filters.supervised.instance
 

Methods in weka.filters.supervised.instance with parameters of type Instance
 boolean Resample.input(Instance instance)
          Input an instance for filtering.
 boolean StratifiedRemoveFolds.input(Instance instance)
          Input an instance for filtering.
 boolean SpreadSubsample.input(Instance instance)
          Input an instance for filtering.
 

Uses of Instance in weka.filters.unsupervised.attribute
 

Methods in weka.filters.unsupervised.attribute that return Instance
 Instance RemoveType.output()
          Output an instance after filtering and remove from the output queue.
 Instance RemoveType.outputPeek()
          Output an instance after filtering but do not remove from the output queue.
 

Methods in weka.filters.unsupervised.attribute with parameters of type Instance
 boolean AddValues.input(Instance instance)
          Input an instance for filtering.
 boolean RemoveType.input(Instance instance)
          Input an instance for filtering.
 boolean ClusterMembership.input(Instance instance)
          Input an instance for filtering.
 boolean PrincipalComponents.input(Instance instance)
          Input an instance for filtering.
 boolean Obfuscate.input(Instance instance)
          Input an instance for filtering.
 boolean AddExpression.input(Instance instance)
          Input an instance for filtering.
 boolean FirstOrder.input(Instance instance)
          Input an instance for filtering.
 boolean AbstractTimeSeries.input(Instance instance)
          Input an instance for filtering.
 boolean Remove.input(Instance instance)
          Input an instance for filtering.
 boolean NumericToBinary.input(Instance instance)
          Input an instance for filtering.
 boolean MergeTwoValues.input(Instance instance)
          Input an instance for filtering.
 boolean NominalToBinary.input(Instance instance)
          Input an instance for filtering.
 boolean MergeManyValues.input(Instance instance)
          Input an instance for filtering.
 boolean Copy.input(Instance instance)
          Input an instance for filtering.
 boolean StringToNominal.input(Instance instance)
          Input an instance for filtering.
 boolean NumericTransform.input(Instance instance)
          Input an instance for filtering.
 boolean NominalToString.input(Instance instance)
          Input an instance for filtering.
 boolean MathExpression.input(Instance instance)
          Input an instance for filtering.
 boolean AddNoise.input(Instance instance)
          Input an instance for filtering.
 boolean RandomProjection.input(Instance instance)
          Input an instance for filtering.
 boolean ChangeDateFormat.input(Instance instance)
          Input an instance for filtering.
 boolean Standardize.input(Instance instance)
          Input an instance for filtering.
 boolean Normalize.input(Instance instance)
          Input an instance for filtering.
 boolean Reorder.input(Instance instance)
          Input an instance for filtering.
 boolean Center.input(Instance instance)
          Input an instance for filtering.
 boolean MakeIndicator.input(Instance instance)
          Input an instance for filtering.
 boolean AddCluster.input(Instance instance)
          Input an instance for filtering.
 boolean AddID.input(Instance instance)
          Input an instance for filtering.
 boolean RemoveUseless.input(Instance instance)
          Input an instance for filtering.
 boolean Discretize.input(Instance instance)
          Input an instance for filtering.
 boolean Add.input(Instance instance)
          Input an instance for filtering.
 boolean StringToWordVector.input(Instance instance)
          Input an instance for filtering.
 boolean ReplaceMissingValues.input(Instance instance)
          Input an instance for filtering.
 boolean SwapValues.input(Instance instance)
          Input an instance for filtering.
 

Uses of Instance in weka.filters.unsupervised.instance
 

Methods in weka.filters.unsupervised.instance with parameters of type Instance
 boolean RemoveMisclassified.input(Instance instance)
          Input an instance for filtering.
 boolean SubsetByExpression.input(Instance instance)
          Input an instance for filtering.
 boolean ReservoirSample.input(Instance instance)
          Input an instance for filtering.
 boolean RemovePercentage.input(Instance instance)
          Input an instance for filtering.
 boolean Resample.input(Instance instance)
          Input an instance for filtering.
 boolean RemoveWithValues.input(Instance instance)
          Input an instance for filtering.
 boolean Randomize.input(Instance instance)
          Input an instance for filtering.
 boolean NonSparseToSparse.input(Instance instance)
          Input an instance for filtering.
 boolean RemoveFolds.input(Instance instance)
          Input an instance for filtering.
 boolean RemoveRange.input(Instance instance)
          Input an instance for filtering.
 boolean RemoveFrequentValues.input(Instance instance)
          Input an instance for filtering.
 boolean SparseToNonSparse.input(Instance instance)
          Input an instance for filtering.
 

Uses of Instance in weka.filters.unsupervised.instance.subsetbyexpression
 

Methods in weka.filters.unsupervised.instance.subsetbyexpression with parameters of type Instance
static Object Parser.getValue(Instance instance, int index)
          Returns either a String object for nominal attributes or a Double for numeric ones.
 

Uses of Instance in weka.gui.beans
 

Methods in weka.gui.beans that return Instance
 Instance IncrementalClassifierEvent.getCurrentInstance()
          Get the current instance
 Instance InstanceEvent.getInstance()
          Get the instance
 

Methods in weka.gui.beans with parameters of type Instance
 void IncrementalClassifierEvent.setCurrentInstance(Instance i)
          Set the current instance for this event
 void InstanceEvent.setInstance(Instance i)
          Set the instance
 

Constructors in weka.gui.beans with parameters of type Instance
IncrementalClassifierEvent(Object source, Classifier scheme, Instance currentI, int status)
          Creates a new IncrementalClassifierEvent instance.
InstanceEvent(Object source, Instance instance, int status)
          Creates a new InstanceEvent instance that encapsulates a single instance only.
 

Uses of Instance in weka.gui.boundaryvisualizer
 

Methods in weka.gui.boundaryvisualizer with parameters of type Instance
 void BoundaryPanel.addTrainingInstance(Instance instance)
          Adds a training instance to the visualization dataset.
 

Uses of Instance in weka.gui.explorer
 

Methods in weka.gui.explorer with parameters of type Instance
 void ClassifierErrorsPlotInstances.process(Instance toPredict, Classifier classifier, Evaluation eval)
          Process a classifier's prediction for an instance and update a set of plotting instances and additional plotting info.
 

Uses of Instance in weka.gui.streams
 

Methods in weka.gui.streams that return Instance
 Instance InstanceProducer.outputPeek()
           
 Instance InstanceLoader.outputPeek()
           
 Instance InstanceJoiner.outputPeek()
          Output an instance after filtering but do not remove from the output queue.
 

Methods in weka.gui.streams with parameters of type Instance
 void InstanceTable.input(Instance instance)
           
 void InstanceSavePanel.input(Instance instance)
           
 void InstanceCounter.input(Instance instance)
           
 void InstanceViewer.input(Instance instance)
           
 boolean InstanceJoiner.input(Instance instance)
           
 



Copyright © 2012 University of Waikato, Hamilton, NZ. All Rights Reserved.