| Package | Description | 
|---|---|
| de.lmu.ifi.dbs.elki.algorithm.clustering.subspace | 
 Axis-parallel subspace clustering algorithms
 
 The clustering algorithms in this package are instances of both, projected
 clustering algorithms or subspace clustering algorithms according to the
 classical but somewhat obsolete classification schema of clustering
 algorithms for axis-parallel subspaces. 
 | 
| de.lmu.ifi.dbs.elki.distance.distancefunction.subspace | 
 Distance functions based on subspaces 
 | 
| Class and Description | 
|---|
| DimensionSelectingSubspaceDistanceFunction
 Interface for dimension selecting subspace distance functions. 
 | 
| Class and Description | 
|---|
| AbstractDimensionsSelectingDistanceFunction
 Abstract base class for distances computed only in subspaces. 
 | 
| AbstractDimensionsSelectingDistanceFunction.Parameterizer
 Parameterization class. 
 | 
| DimensionSelectingSubspaceDistanceFunction
 Interface for dimension selecting subspace distance functions. 
 | 
| OnedimensionalDistanceFunction
 Distance function that computes the distance between feature vectors as the
 absolute difference of their values in a specified dimension only. 
 | 
| SubspaceEuclideanDistanceFunction
 Euclidean distance function between  
NumberVectors only in specified
 dimensions. | 
| SubspaceLPNormDistanceFunction
 Lp-Norm distance function between  
NumberVectors only in
 specified dimensions. | 
| SubspaceManhattanDistanceFunction
 Manhattan distance function between  
NumberVectors only in specified
 dimensions. | 
| SubspaceMaximumDistanceFunction
 Maximum distance function between  
NumberVectors only in specified
 dimensions. | 
Copyright © 2019 ELKI Development Team. License information.