Systematics Audit (DL advocatus)

DEVELOPED FOR
Experimental physics collaborations, journal reviewers, and statistics groups (auditing anomaly claims against unmodeled systematics)

The challenge

  • Frontier experiments (HEP, precision tests) often report anomalies before cross-validation is possible.
  • Unaccounted systematic distortions can masquerade as “new-physics” signals and drive premature claims.
  • Standard profile likelihood handles known nuisance parameters only; no quantitative tool for unmodeled systematics.

The Solution

  • Post-hoc framework for quantifying the impact of unaccounted systematic distortions on measurement results.
  • Introduces nuisance parameters ν a posteriori, constrained by control measurements and physical priors Ω(ν).
  • Reduces to constrained optimization of a test statistic, solved with classical methods.

Core innovations:

  • Anomaly explanation: Search for ν that best explains the anomaly as a systematic; yields a corrected significance α̂.
  • Worst-case search: Finds the largest allowed deviation under admissible ν, quantifying measurement vulnerability.
  • Test correction: Reject H₀ only if no admissible ν explains the anomaly.

Impact

Industrial Directions

  • High-energy and precision physics (CERN, Fermilab, Belle II, g-2).
  • Statistical methodology and experimental design.
  • Meta-science and reproducibility (systematics auditing of anomaly claims).
  • AI-Scientist: Automated hypothesis generation and validation.

Research Team

Meet Our PIs

Discover the principal investigators behind this project and the expertise that made it possible.

Prof. Dr. Andrey Ustyuzhanin

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