bagged.outliertrees - Robust Explainable Outlier Detection Based on OutlierTree
Bagged OutlierTrees is an explainable unsupervised outlier
detection method based on an ensemble implementation of the
existing OutlierTree procedure (Cortes, 2020). This
implementation takes advantage of bootstrap aggregating
(bagging) to improve robustness by reducing the possible
masking effect and subsequent high variance (similarly to
Isolation Forest), hence the name "Bagged OutlierTrees". To
learn more about the base procedure OutlierTree (Cortes, 2020),
please refer to <arXiv:2001.00636>.