ICML2022

Causal structure-based root cause analysis of outliers

Kailash Budhathoki, Lenon Minorics, Patrick Blöbaum, Dominik Janzing

88 citations

Abstract

We describe a formal approach to identify 'root causes' of outliers observed in nn variables X1,,XnX_1,\dots,X_n in a scenario where the causal relation between the variables is a known directed acyclic graph (DAG). To this end, we first introduce a systematic way to define outlier scores. Further, we introduce the concept of 'conditional outlier score' which measures whether a value of some variable is unexpected given the value of its parents in the DAG, if one were to assume that the causal structure and the corresponding conditional distributions are also valid for the anomaly. Finally, we quantify to what extent the high outlier score of some target variable can be attributed to outliers of its ancestors. This quantification is defined via Shapley values from cooperative game theory.