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Relative Advantage: Quantifying Performance in Noisy Competitive Settings (2504.19612v1)

Published 28 Apr 2025 in physics.data-an

Abstract: Performance measurement in competitive domains is frequently confounded by shared environmental factors that obscure true performance differences. For instance, absolute metrics can be heavily influenced by factors as varied as weather conditions in sports, prevailing economic climates in business evaluations, or the socioeconomic background of student populations in education. This paper develops a unified mathematical framework for relative performance metrics that systematically eliminates shared environmental effects through a principled transformation that will help improve interpretation of performance metrics. We formalise the mechanism of environmental noise cancellation using signal-to-noise ratio analysis and establish theoretical bounds on metric performance. Through comprehensive simulations across diverse parameter configurations, we demonstrate that relative metrics consistently outperform absolute ones under specified conditions, with improvements up to 28\% in classification accuracy when environmental noise dominates individual variations. As an example, we validate the mathematical framework using real-world rugby performance data, confirming that relativised metrics provide substantially better predictive power than their absolute counterparts. Our approach offers both theoretical insights into the conditions governing metric effectiveness and practical guidance for measurement system design across competitive domains from sports analytics to financial performance evaluation and healthcare outcomes research.

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