Uses of Interface
weka.core.AdditionalMeasureProducer

Packages that use AdditionalMeasureProducer
weka.classifiers.bayes   
weka.classifiers.bayes.net   
weka.classifiers.functions   
weka.classifiers.lazy   
weka.classifiers.meta   
weka.classifiers.misc   
weka.classifiers.rules   
weka.classifiers.trees   
weka.classifiers.trees.m5   
weka.core.neighboursearch   
weka.experiment   
 

Uses of AdditionalMeasureProducer in weka.classifiers.bayes
 

Classes in weka.classifiers.bayes that implement AdditionalMeasureProducer
 class BayesNet
          Bayes Network learning using various search algorithms and quality measures.
Base class for a Bayes Network classifier.
 

Uses of AdditionalMeasureProducer in weka.classifiers.bayes.net
 

Classes in weka.classifiers.bayes.net that implement AdditionalMeasureProducer
 class BayesNetGenerator
          Bayes Network learning using various search algorithms and quality measures.
Base class for a Bayes Network classifier.
 class BIFReader
          Builds a description of a Bayes Net classifier stored in XML BIF 0.3 format.

For more details on XML BIF see:

Fabio Cozman, Marek Druzdzel, Daniel Garcia (1998).
 class EditableBayesNet
          Bayes Network learning using various search algorithms and quality measures.
Base class for a Bayes Network classifier.
 

Uses of AdditionalMeasureProducer in weka.classifiers.functions
 

Classes in weka.classifiers.functions that implement AdditionalMeasureProducer
 class SimpleLogistic
          Classifier for building linear logistic regression models.
 class SMOreg
          SMOreg implements the support vector machine for regression.
 

Uses of AdditionalMeasureProducer in weka.classifiers.lazy
 

Classes in weka.classifiers.lazy that implement AdditionalMeasureProducer
 class IBk
          K-nearest neighbours classifier.
 

Uses of AdditionalMeasureProducer in weka.classifiers.meta
 

Classes in weka.classifiers.meta that implement AdditionalMeasureProducer
 class AdditiveRegression
          Meta classifier that enhances the performance of a regression base classifier.
 class AttributeSelectedClassifier
          Dimensionality of training and test data is reduced by attribute selection before being passed on to a classifier.
 class Bagging
          Class for bagging a classifier to reduce variance.
 

Uses of AdditionalMeasureProducer in weka.classifiers.misc
 

Classes in weka.classifiers.misc that implement AdditionalMeasureProducer
 class InputMappedClassifier
          Wrapper classifier that addresses incompatible training and test data by building a mapping between the training data that a classifier has been built with and the incoming test instances' structure.
 

Uses of AdditionalMeasureProducer in weka.classifiers.rules
 

Classes in weka.classifiers.rules that implement AdditionalMeasureProducer
 class DecisionTable
          Class for building and using a simple decision table majority classifier.

For more information see:

Ron Kohavi: The Power of Decision Tables.
 class JRip
          This class implements a propositional rule learner, Repeated Incremental Pruning to Produce Error Reduction (RIPPER), which was proposed by William W.
 class M5Rules
          Generates a decision list for regression problems using separate-and-conquer.
 class PART
          Class for generating a PART decision list.
 

Uses of AdditionalMeasureProducer in weka.classifiers.trees
 

Classes in weka.classifiers.trees that implement AdditionalMeasureProducer
 class J48
          Class for generating a pruned or unpruned C4.5 decision tree.
 class LMT
          Classifier for building 'logistic model trees', which are classification trees with logistic regression functions at the leaves.
 class M5P
          M5Base.
 class RandomForest
          Class for constructing a forest of random trees.

For more information see:

Leo Breiman (2001).
 class REPTree
          Fast decision tree learner.
 

Uses of AdditionalMeasureProducer in weka.classifiers.trees.m5
 

Classes in weka.classifiers.trees.m5 that implement AdditionalMeasureProducer
 class M5Base
          M5Base.
 

Uses of AdditionalMeasureProducer in weka.core.neighboursearch
 

Classes in weka.core.neighboursearch that implement AdditionalMeasureProducer
 class BallTree
          Class implementing the BallTree/Metric Tree algorithm for nearest neighbour search.
The connection to dataset is only a reference.
 class CoverTree
          Class implementing the CoverTree datastructure.
The class is very much a translation of the c source code made available by the authors.

For more information and original source code see:

Alina Beygelzimer, Sham Kakade, John Langford: Cover trees for nearest neighbor.
 class KDTree
          Class implementing the KDTree search algorithm for nearest neighbour search.
The connection to dataset is only a reference.
 class LinearNNSearch
          Class implementing the brute force search algorithm for nearest neighbour search.
 class NearestNeighbourSearch
          Abstract class for nearest neighbour search.
 class PerformanceStats
          The class that measures the performance of a nearest neighbour search (NNS) algorithm.
 class TreePerformanceStats
          The class that measures the performance of a tree based nearest neighbour search algorithm.
 

Uses of AdditionalMeasureProducer in weka.experiment
 

Classes in weka.experiment that implement AdditionalMeasureProducer
 class AveragingResultProducer
          Takes the results from a ResultProducer and submits the average to the result listener.
 class ClassifierSplitEvaluator
          A SplitEvaluator that produces results for a classification scheme on a nominal class attribute.
 class CostSensitiveClassifierSplitEvaluator
          SplitEvaluator that produces results for a classification scheme on a nominal class attribute, including weighted misclassification costs.
 class CrossValidationResultProducer
          Generates for each run, carries out an n-fold cross-validation, using the set SplitEvaluator to generate some results.
 class CrossValidationSplitResultProducer
          Carries out one split of a repeated k-fold cross-validation, using the set SplitEvaluator to generate some results.
 class DatabaseResultProducer
          Examines a database and extracts out the results produced by the specified ResultProducer and submits them to the specified ResultListener.
 class DensityBasedClustererSplitEvaluator
          A SplitEvaluator that produces results for a density based clusterer.
 class ExplicitTestsetResultProducer
          Loads the external test set and calls the appropriate SplitEvaluator to generate some results.
The filename of the test set is constructed as follows:
<dir> + / + <prefix> + <relation-name> + <suffix>
The relation-name can be modified by using the regular expression to replace the matching sub-string with a specified replacement string.
 class LearningRateResultProducer
          Tells a sub-ResultProducer to reproduce the current run for varying sized subsamples of the dataset.
 class RandomSplitResultProducer
          Generates a single train/test split and calls the appropriate SplitEvaluator to generate some results.
 class RegressionSplitEvaluator
          A SplitEvaluator that produces results for a classification scheme on a numeric class attribute.
 



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