Package elki.clustering.kmeans.spherical
Class SphericalKMeans<V extends elki.data.NumberVector>
- java.lang.Object
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- elki.clustering.kmeans.AbstractKMeans<V,KMeansModel>
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- elki.clustering.kmeans.spherical.SphericalKMeans<V>
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- Type Parameters:
V- vector datatype
- All Implemented Interfaces:
elki.Algorithm,ClusteringAlgorithm<Clustering<KMeansModel>>,KMeans<V,KMeansModel>
- Direct Known Subclasses:
EuclideanSphericalHamerlyKMeans,EuclideanSphericalSimplifiedElkanKMeans,SphericalHamerlyKMeans,SphericalSimplifiedElkanKMeans,SphericalSimplifiedHamerlyKMeans,SphericalSingleAssignmentKMeans
@Reference(authors="I. S. Dhillon, D. S. Modha", title="Concept Decompositions for Large Sparse Text Data Using Clustering", booktitle="Machine Learning 42", url="https://doi.org/10.1023/A:1007612920971", bibkey="DBLP:journals/ml/DhillonM01") public class SphericalKMeans<V extends elki.data.NumberVector> extends AbstractKMeans<V,KMeansModel>The standard spherical k-means algorithm.Reference:
I. S. Dhillon, D. S. Modha
Concept Decompositions for Large Sparse Text Data Using Clustering
Machine Learning 42- Since:
- 0.8.0
- Author:
- Alexander Voß, Erich Schubert
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Nested Class Summary
Nested Classes Modifier and Type Class Description static classSphericalKMeans.InstanceInstance for a particular data set.static classSphericalKMeans.Par<V extends elki.data.NumberVector>Parameterization class.
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Field Summary
Fields Modifier and Type Field Description private static elki.logging.LoggingLOGClass logger-
Fields inherited from class elki.clustering.kmeans.AbstractKMeans
distance, initializer, k, maxiter
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Fields inherited from interface elki.clustering.kmeans.KMeans
DISTANCE_FUNCTION_ID, INIT_ID, K_ID, MAXITER_ID, SEED_ID, VARSTAT_ID
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Constructor Summary
Constructors Constructor Description SphericalKMeans(int k, int maxiter, KMeansInitialization initializer)Constructor.
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Method Summary
All Methods Instance Methods Concrete Methods Modifier and Type Method Description elki.data.type.TypeInformation[]getInputTypeRestriction()protected elki.logging.LogginggetLogger()Get the (STATIC) logger for this class.Clustering<KMeansModel>run(elki.database.relation.Relation<V> relation)Run the clustering algorithm.-
Methods inherited from class elki.clustering.kmeans.AbstractKMeans
getDistance, incrementalUpdateMean, initialMeans, means, minusEquals, nearestMeans, plusEquals, plusMinusEquals, setDistance, setInitializer, setK
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Methods inherited from class java.lang.Object
clone, equals, finalize, getClass, hashCode, notify, notifyAll, toString, wait, wait, wait
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Methods inherited from interface elki.clustering.ClusteringAlgorithm
autorun
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Constructor Detail
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SphericalKMeans
public SphericalKMeans(int k, int maxiter, KMeansInitialization initializer)Constructor.- Parameters:
k- Number of clustersmaxiter- Maximum number of iterationsinitializer- Initialization class
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Method Detail
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run
public Clustering<KMeansModel> run(elki.database.relation.Relation<V> relation)
Description copied from interface:KMeansRun the clustering algorithm.- Parameters:
relation- Relation to process.- Returns:
- Clustering result
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getInputTypeRestriction
public elki.data.type.TypeInformation[] getInputTypeRestriction()
- Specified by:
getInputTypeRestrictionin interfaceelki.Algorithm- Overrides:
getInputTypeRestrictionin classAbstractKMeans<V extends elki.data.NumberVector,KMeansModel>
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getLogger
protected elki.logging.Logging getLogger()
Description copied from class:AbstractKMeansGet the (STATIC) logger for this class.- Specified by:
getLoggerin classAbstractKMeans<V extends elki.data.NumberVector,KMeansModel>- Returns:
- the static logger
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