| Modifier and Type | Class and Description |
|---|---|
class |
BayesNet
Bayes Network learning using various search algorithms and quality measures.
Base class for a Bayes Network classifier. |
| Modifier and Type | Class and Description |
|---|---|
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. |
| Modifier and Type | Class and Description |
|---|---|
class |
SimpleLogistic
Classifier for building linear logistic regression models.
|
class |
SMOreg
SMOreg implements the support vector machine for regression.
|
| Modifier and Type | Class and Description |
|---|---|
class |
IBk
K-nearest neighbours classifier.
|
| Modifier and Type | Class and Description |
|---|---|
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.
|
| Modifier and Type | Class and Description |
|---|---|
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.
|
| Modifier and Type | Class and Description |
|---|---|
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.
|
| Modifier and Type | Class and Description |
|---|---|
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.
|
| Modifier and Type | Class and Description |
|---|---|
class |
M5Base
M5Base.
|
| Modifier and Type | Class and Description |
|---|---|
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.
|
| Modifier and Type | Class and Description |
|---|---|
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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