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Main Authors: Suhr, Hendrik, Kaltenpoth, David, Vreeken, Jilles
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.23026
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author Suhr, Hendrik
Kaltenpoth, David
Vreeken, Jilles
author_facet Suhr, Hendrik
Kaltenpoth, David
Vreeken, Jilles
contents Root cause analysis of anomalies aims to identify how and why a sample deviates from the normal process. Existing methods primarily focus on telling which features are responsible, ignoring that anomalies can arise through two fundamentally different processes: measurement errors, where the sample is generated normally but one or more values is recorded incorrectly, and mechanism shifts, where the causal process that generated the sample was changed. While measurement errors can often be safely corrected, mechanistic anomalies require careful consideration. In this paper, we formally define a causal model that explicitly captures both types by treating outliers as latent interventions on latent ("true") and observed ("measured") variables and show under which conditions the distinction is possible. Based on this model, we develop an efficient inference procedure for localizing root causes and distinguishing anomaly types. Experiments on synthetic and real-world data show that our method provides state-of-the-art and highly robust performance in both root cause localization and classification of anomaly types.
format Preprint
id arxiv_https___arxiv_org_abs_2601_23026
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Root Cause Analysis of Measurement and Mechanistic Anomalies
Suhr, Hendrik
Kaltenpoth, David
Vreeken, Jilles
Machine Learning
Root cause analysis of anomalies aims to identify how and why a sample deviates from the normal process. Existing methods primarily focus on telling which features are responsible, ignoring that anomalies can arise through two fundamentally different processes: measurement errors, where the sample is generated normally but one or more values is recorded incorrectly, and mechanism shifts, where the causal process that generated the sample was changed. While measurement errors can often be safely corrected, mechanistic anomalies require careful consideration. In this paper, we formally define a causal model that explicitly captures both types by treating outliers as latent interventions on latent ("true") and observed ("measured") variables and show under which conditions the distinction is possible. Based on this model, we develop an efficient inference procedure for localizing root causes and distinguishing anomaly types. Experiments on synthetic and real-world data show that our method provides state-of-the-art and highly robust performance in both root cause localization and classification of anomaly types.
title Root Cause Analysis of Measurement and Mechanistic Anomalies
topic Machine Learning
url https://arxiv.org/abs/2601.23026