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| Packages that use Clusterer | |
|---|---|
| weka.attributeSelection | |
| weka.clusterers | |
| weka.filters.unsupervised.attribute | |
| weka.gui.beans | |
| weka.gui.explorer | |
| Uses of Clusterer in weka.attributeSelection |
|---|
| Methods in weka.attributeSelection that return Clusterer | |
|---|---|
abstract Clusterer |
UnsupervisedSubsetEvaluator.getClusterer()
Get the clusterer |
| Methods in weka.attributeSelection with parameters of type Clusterer | |
|---|---|
abstract void |
UnsupervisedSubsetEvaluator.setClusterer(Clusterer d)
Set the clusterer to use |
| Uses of Clusterer in weka.clusterers |
|---|
| Subinterfaces of Clusterer in weka.clusterers | |
|---|---|
interface |
DensityBasedClusterer
Interface for clusterers that can estimate the density for a given instance. |
| Classes in weka.clusterers that implement Clusterer | |
|---|---|
class |
AbstractClusterer
Abstract clusterer. |
class |
AbstractDensityBasedClusterer
Abstract clustering model that produces (for each test instance) an estimate of the membership in each cluster (ie. |
class |
Cobweb
Class implementing the Cobweb and Classit clustering algorithms. Note: the application of node operators (merging, splitting etc.) in terms of ordering and priority differs (and is somewhat ambiguous) between the original Cobweb and Classit papers. |
class |
EM
Simple EM (expectation maximisation) class. EM assigns a probability distribution to each instance which indicates the probability of it belonging to each of the clusters. |
class |
FarthestFirst
Cluster data using the FarthestFirst algorithm. For more information see: Hochbaum, Shmoys (1985). |
class |
FilteredClusterer
Class for running an arbitrary clusterer on data that has been passed through an arbitrary filter. |
class |
HierarchicalClusterer
Hierarchical clustering class. |
class |
MakeDensityBasedClusterer
Class for wrapping a Clusterer to make it return a distribution and density. |
class |
RandomizableClusterer
Abstract utility class for handling settings common to randomizable clusterers. |
class |
RandomizableDensityBasedClusterer
Abstract utility class for handling settings common to randomizable clusterers. |
class |
RandomizableSingleClustererEnhancer
Abstract utility class for handling settings common to randomizable clusterers. |
class |
SimpleKMeans
Cluster data using the k means algorithm. |
class |
SingleClustererEnhancer
Meta-clusterer for enhancing a base clusterer. |
| Methods in weka.clusterers that return Clusterer | |
|---|---|
static Clusterer |
AbstractClusterer.forName(String clustererName,
String[] options)
Creates a new instance of a clusterer given it's class name and (optional) arguments to pass to it's setOptions method. |
Clusterer |
CheckClusterer.getClusterer()
Get the clusterer used as the clusterer |
Clusterer |
MakeDensityBasedClusterer.getClusterer()
Gets the clusterer being wrapped. |
Clusterer |
SingleClustererEnhancer.getClusterer()
Get the clusterer used as the base clusterer. |
static Clusterer[] |
AbstractClusterer.makeCopies(Clusterer model,
int num)
Creates copies of the current clusterer. |
static Clusterer |
AbstractClusterer.makeCopy(Clusterer model)
Creates a deep copy of the given clusterer using serialization. |
| Methods in weka.clusterers with parameters of type Clusterer | |
|---|---|
static String |
ClusterEvaluation.evaluateClusterer(Clusterer clusterer,
String[] options)
Evaluates a clusterer with the options given in an array of strings. |
static Clusterer[] |
AbstractClusterer.makeCopies(Clusterer model,
int num)
Creates copies of the current clusterer. |
static Clusterer |
AbstractClusterer.makeCopy(Clusterer model)
Creates a deep copy of the given clusterer using serialization. |
static void |
AbstractClusterer.runClusterer(Clusterer clusterer,
String[] options)
runs the clusterer instance with the given options. |
void |
CheckClusterer.setClusterer(Clusterer newClusterer)
Set the clusterer for testing. |
void |
ClusterEvaluation.setClusterer(Clusterer clusterer)
set the clusterer |
void |
MakeDensityBasedClusterer.setClusterer(Clusterer toWrap)
Sets the clusterer to wrap. |
void |
SingleClustererEnhancer.setClusterer(Clusterer value)
Set the base clusterer. |
| Constructors in weka.clusterers with parameters of type Clusterer | |
|---|---|
MakeDensityBasedClusterer(Clusterer toWrap)
Contructs a MakeDensityBasedClusterer wrapping a given Clusterer. |
|
| Uses of Clusterer in weka.filters.unsupervised.attribute |
|---|
| Methods in weka.filters.unsupervised.attribute that return Clusterer | |
|---|---|
Clusterer |
AddCluster.getClusterer()
Gets the clusterer used by the filter. |
| Methods in weka.filters.unsupervised.attribute with parameters of type Clusterer | |
|---|---|
void |
AddCluster.setClusterer(Clusterer clusterer)
Sets the clusterer to assign clusters with. |
| Uses of Clusterer in weka.gui.beans |
|---|
| Methods in weka.gui.beans that return Clusterer | |
|---|---|
Clusterer |
BatchClustererEvent.getClusterer()
Get the clusterer |
Clusterer |
Clusterer.getClusterer()
Get the clusterer currently set for this wrapper |
| Methods in weka.gui.beans with parameters of type Clusterer | |
|---|---|
void |
Clusterer.setClusterer(Clusterer c)
Set the clusterer for this wrapper |
| Constructors in weka.gui.beans with parameters of type Clusterer | |
|---|---|
BatchClustererEvent(Object source,
Clusterer scheme,
DataSetEvent tstI,
int setNum,
int maxSetNum,
int testOrTrain)
Creates a new BatchClustererEvent instance. |
|
| Uses of Clusterer in weka.gui.explorer |
|---|
| Methods in weka.gui.explorer that return Clusterer | |
|---|---|
Clusterer |
ClustererAssignmentsPlotInstances.getClusterer()
Returns the currently set clusterer. |
| Methods in weka.gui.explorer with parameters of type Clusterer | |
|---|---|
void |
ClustererAssignmentsPlotInstances.setClusterer(Clusterer value)
Sets the classifier used for making the predictions. |
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