Litcius/Paper detail

Overview of leakage scenarios in supervised machine learning

Leonard Sasse, Eliana Nicolaisen‐Sobesky, Juergen Dukart, Simon B. Eickhoff, Michael Goetz, Sami Hamdan, Vera Komeyer, Abhijit Kulkarni, Juha M. Lahnakoski, Bradley C. Love, Federico Raimondo, Kaustubh R. Patil

2025Journal Of Big Data50 citationsDOIOpen Access PDF

Abstract

Abstract Machine learning (ML) provides powerful tools for predictive modeling. ML’s popularity stems from the promise of sample-level prediction with applications across a variety of fields from physics and marketing to healthcare. However, if not properly implemented and evaluated, ML pipelines may contain leakage typically resulting in overoptimistic performance estimates and failure to generalize to new data. This can have severe negative financial and societal implications. Our aim is to expand understanding associated with causes leading to leakage when designing, implementing, and evaluating ML pipelines. Illustrated by concrete examples, we provide a comprehensive overview and discussion of various types of leakage that may arise in ML pipelines.

Topics & Concepts

Computer scienceComputational Science and EngineeringLeakage (economics)Machine learningArtificial intelligenceData scienceMacroeconomicsEconomicsAnomaly Detection Techniques and ApplicationsNetwork Security and Intrusion DetectionAdvanced Malware Detection Techniques