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Asymptotic Properties of Matthews Correlation Coefficient

Yuki Itaya, Junsuke Tamura, Kenichi Hayashi, Kouji Yamamoto

2024Statistics in Medicine10 citationsDOIOpen Access PDF

Abstract

Evaluating classifications is crucial in statistics and machine learning, as it influences decision-making across various fields, such as patient prognosis and therapy in critical conditions. The Matthews correlation coefficient (MCC), also known as the phi coefficient, is recognized as a performance metric with high reliability, offering a balanced measurement even in the presence of class imbalances. Despite its importance, there remains a notable lack of comprehensive research on the statistical inference of MCC. This deficiency often leads to studies merely validating and comparing MCC point estimates-a practice that, while common, overlooks the statistical significance and reliability of results. Addressing this research gap, our paper introduces and evaluates several methods to construct asymptotic confidence intervals for the single MCC and the differences between MCCs in paired designs. Through simulations across various scenarios, we evaluate the finite-sample behavior of these methods and compare their performances. Furthermore, through real data analysis, we illustrate the potential utility of our findings in comparing binary classifiers, highlighting the possible contributions of our research in this field.

Topics & Concepts

Statistical inferenceReliability (semiconductor)Metric (unit)Computer scienceInferenceBinary numberCorrelationCorrelation coefficientStatisticsField (mathematics)EconometricsArtificial intelligenceMachine learningMathematicsArithmeticGeometryEconomicsQuantum mechanicsOperations managementPhysicsPure mathematicsPower (physics)Statistical Methods and InferenceBayesian Methods and Mixture ModelsStatistical Methods and Bayesian Inference