Litcius/Paper detail

Stop Measuring Calibration When Humans Disagree

Joris Baan, Wilker Aziz, Barbara Plank, Raquel Fernández

202221 citationsDOIOpen Access PDF

Abstract

Calibration is a popular framework to evaluate whether a classifier knows when it does not know - i.e., its predictive probabilities are a good indication of how likely a prediction is to be correct. Correctness is commonly estimated against the human majority class. Recently, calibration to human majority has been measured on tasks where humans inherently disagree about which class applies. We show that measuring calibration to human majority given inherent disagreements is theoretically problematic, demonstrate this empirically on the ChaosNLI dataset, and derive several instance-level measures of calibration that capture key statistical properties of human judgements - including class frequency, ranking and entropy.

Topics & Concepts

CorrectnessComputer scienceCalibrationClassifier (UML)Artificial intelligenceMachine learningEntropy (arrow of time)Class (philosophy)Ranking (information retrieval)Data miningStatisticsAlgorithmMathematicsPhysicsQuantum mechanicsExplainable Artificial Intelligence (XAI)Statistical Mechanics and EntropyNeural Networks and Applications