See: Description
| Class | Description |
|---|---|
| ComputeKNNOutlierScores<O extends NumberVector> |
Application that runs a series of kNN-based algorithms on a data set, for
building an ensemble in a second step.
|
| ComputeKNNOutlierScores.Parameterizer<O extends NumberVector> |
Parameterization class.
|
| EvaluatePrecomputedOutlierScores |
Class to load an outlier detection summary file, as produced by
ComputeKNNOutlierScores, and compute popular evaluation metrics for
it. |
| EvaluatePrecomputedOutlierScores.Parameterizer |
Parameterization class.
|
| GreedyEnsembleExperiment |
Class to load an outlier detection summary file, as produced by
ComputeKNNOutlierScores, and compute a naive ensemble for it. |
| GreedyEnsembleExperiment.Parameterizer |
Parameterization class.
|
| VisualizePairwiseGainMatrix |
Class to load an outlier detection summary file, as produced by
ComputeKNNOutlierScores, and compute a matrix with the pairwise
gains. |
| VisualizePairwiseGainMatrix.Parameterizer |
Parameterization class.
|
| Enum | Description |
|---|---|
| GreedyEnsembleExperiment.Distance |
Distance modes.
|
This package contains code used for the greedy ensemble experiment in
Erich Schubert, Remigius Wojdanowski, Arthur Zimek, Hans-Peter Kriegel
On Evaluation of Outlier Rankings and Outlier Scores
Proc. 12th SIAM Int. Conf. on Data Mining (SDM 2012)
Copyright © 2019 ELKI Development Team. License information.