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.

Abstract

Anti-doping programs rely on biological testing to detect performance-enhancing drugs, but such testing costs over $800 per sample and is limited by short detection windows for many prohibited substances. These constraints leave large portions of athletes without regular testing, motivating complementary screening approaches that analyze routine competition results to identify suspicious performance patterns. We present a system that processes 1.6 million athletics performances from over 19,000 competitions (2010-2025) using eight detection methods ranging from statistical rules to machine learning and trajectory analysis. We validate all methods against publicly confirmed anti-doping violations to measure their effectiveness in identifying sanctioned athletes. Trajectory-based methods, which compare performances to expected career progression, achieve the best balance between detecting violations and limiting false alarms, though all methods face challenges from incomplete data and rare confirmed violations. The system provides an interactive interface for expert-driven investigation, emphasizing transparency and human judgment to support, rather than replace, established anti-doping processes.