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HighDimOut (version 1.0.0)

HighDimOut-package: Outlier Detection Algorithms for High-Dimensional Data

Description

Three high-dimensional outlier detection algorithms and a outlier unification scheme are implemented in this package. The angle-based outlier detection (ABOD) algorithm is based on the work of Kriegel, Schubert, and Zimek [2008]. The subspace outlier detection (SOD) algorithm is based on the work of Kriegel, Kroger, Schubert, and Zimek [2009]. The feature bagging-based outlier detection (FBOD) algorithm is based on the work of Lazarevic and Kumar [2005]. The outlier unification scheme is based on the work of Kriegel, Kroger, Schubert, and Zimek [2011].

Arguments

Details

Package:
HighDimOut
Type:
Package
Version:
1.0
Date:
2015-03-30
License:
MIT

References

Hans-Peter Kriegel, Matthias Schubert, Arthur Zimek. Angle-based outlier detection in high-dimensional data. KDD 2008, 444-452.

Hans-Peter Kriegel, Peer Kroger, Erich Schubert, Arthur Zimek. Interpreting and Unifying Outlier Scores. SDM 2011, 13-24.

Hans-Peter Kriegel, Peer Kroger, Erich Schubert, Arthur Zimek. Outlier Detection in Axis-Parallel Subspaces of High Dimensional Data. PAKDD 2009, 831-838.

Aleksandar Lazarevic, Vipin Kumar. Feature bagging for outlier detection. KDD 2005, 157-166.