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Classifier uncertainty: evidence, potential impact, and probabilistic treatment

Niklas Tötsch, Daniel Hoffmann

2021PeerJ Computer Science35 citationsDOIOpen Access PDF

Abstract

Classifiers are often tested on relatively small data sets, which should lead to uncertain performance metrics. Nevertheless, these metrics are usually taken at face value. We present an approach to quantify the uncertainty of classification performance metrics, based on a probability model of the confusion matrix. Application of our approach to classifiers from the scientific literature and a classification competition shows that uncertainties can be surprisingly large and limit performance evaluation. In fact, some published classifiers may be misleading. The application of our approach is simple and requires only the confusion matrix. It is agnostic of the underlying classifier. Our method can also be used for the estimation of sample sizes that achieve a desired precision of a performance metric.

Topics & Concepts

Confusion matrixComputer scienceClassifier (UML)Probabilistic logicMachine learningArtificial intelligenceConfusionProbabilistic classificationMetric (unit)Performance metricData miningPattern recognition (psychology)Support vector machineNaive Bayes classifierEngineeringManagementOperations managementPsychologyEconomicsPsychoanalysisAdvanced Statistical Methods and ModelsStatistical Methods and Bayesian InferenceBayesian Modeling and Causal Inference
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