All Packages Databases and Index Structures Datatypes and Distance Functions Evaluation Utilities and Miscellaneous 
Package Description
elki.clustering
Clustering algorithms.
elki.clustering.affinitypropagation
Affinity Propagation (AP) clustering.
elki.clustering.biclustering
Biclustering algorithms.
elki.clustering.correlation
Correlation clustering algorithms.
elki.clustering.dbscan
DBSCAN and its generalizations.
elki.clustering.dbscan.parallel
Parallel versions of Generalized DBSCAN.
elki.clustering.dbscan.predicates
Neighbor and core predicated for Generalized DBSCAN.
elki.clustering.dbscan.util
Utility classes for specialized DBSCAN implementations.
elki.clustering.em
Expectation-Maximization clustering algorithm for Gaussian Mixture Modeling (GMM).
elki.clustering.em.models  
elki.clustering.hierarchical
Hierarchical agglomerative clustering (HAC).
elki.clustering.hierarchical.birch
BIRCH clustering.
elki.clustering.hierarchical.extraction
Extraction of partitional clusterings from hierarchical results.
elki.clustering.hierarchical.linkage
Linkages for hierarchical clustering.
elki.clustering.kcenter
K-center clustering.
elki.clustering.kmeans
K-means clustering and variations.
elki.clustering.kmeans.initialization
Initialization strategies for k-means.
elki.clustering.kmeans.initialization.betula
Initialization methods for BIRCH-based k-means and EM clustering.
elki.clustering.kmeans.parallel
Parallelized implementations of k-means.
elki.clustering.kmeans.quality
Quality measures for k-Means results.
elki.clustering.kmeans.spherical
Spherical k-means clustering and variations.
elki.clustering.kmedoids
K-medoids clustering (PAM).
elki.clustering.kmedoids.initialization  
elki.clustering.meta
Meta clustering algorithms, that get their result from other clusterings or external sources.
elki.clustering.onedimensional
Clustering algorithms for one-dimensional data.
elki.clustering.optics
OPTICS family of clustering algorithms.
elki.clustering.silhouette
Silhouette clustering algorithms.
elki.clustering.subspace
Axis-parallel subspace clustering algorithms.
elki.clustering.subspace.clique
Helper classes for the CLIQUE algorithm.
elki.clustering.trivial
Trivial clustering algorithms: all in one, no clusters, label clusterings.
elki.data  
elki.data.model
Cluster models classes for various algorithms.
elki.datasource.parser  
elki.evaluation.clustering
Evaluation of clustering results.
elki.evaluation.clustering.extractor
Classes to extract clusterings from hierarchical clustering.
elki.evaluation.clustering.internal
Internal evaluation measures for clusterings.
elki.evaluation.clustering.pairsegments
Pair-segment analysis of multiple clusterings.
elki.index.preprocessed.fastoptics
Preprocessed index used by the FastOPTICS algorithm.
elki.index.tree.betula
BETULA clustering by aggregating the data into cluster features.
elki.index.tree.betula.distance
Distance functions for BETULA and BIRCH.
elki.index.tree.betula.features
Different variants of Betula and BIRCH cluster features.
elki.result  
elki.similarity.cluster
Similarity measures for comparing clusters.