Performance Anomaly Detection in Athletics: A Benchmarking System with Visual Analytics
arXiv cs.LG / 4/27/2026
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Key Points
- The paper introduces a benchmarking system to screen athletics results for suspicious performance patterns as a complement to costly, short-window anti-doping tests.
- It analyzes 1.6 million performances across 19,000+ competitions (2010–2025) using eight detection approaches spanning statistical rules, machine learning, and trajectory-based analysis.
- The methods are validated against publicly confirmed anti-doping violations to quantify how well they identify sanctioned athletes while controlling false alarms.
- Trajectory-based techniques perform best by balancing violation detection with fewer false positives, but all approaches are limited by incomplete data and the rarity of confirmed cases.
- An interactive, expert-oriented visual analytics interface is provided to support human-led investigations with transparency rather than replacing established anti-doping workflows.




