10 lines
388 B
Plaintext
10 lines
388 B
Plaintext
|
Isolation Forests are one algorithm for AD
|
||
|
Tries to isolate abnormal (rare) points instead of modelling normal ones
|
||
|
Creative approach->fairly successful (3000 Citations)
|
||
|
Many follow up papers
|
||
|
Extended Isolation Forest (Hariri et. al. 2018, 140 Citations)
|
||
|
Remove bias from the Isolation Forests
|
||
|
Also claim to improve their anomaly detection quality
|
||
|
(repeat with both cuts and ad quality)
|
||
|
|