Evaluating robustly standardized explainable anomaly detection of implausible variables in cancer data.
Explanations help to understand why anomaly detection algorithms identify data as anomalous. This study evaluates whether robustly standardized explanation scores correctly identify the implausible variables that make cancer data anomalous.
Author(s): Röchner, Philipp, Rothlauf, Franz
DOI: 10.1093/jamia/ocaf011