Publication | Closed Access
Transforming classifier scores into accurate multiclass probability estimates
1K
Citations
20
References
2002
Year
Unknown Venue
EngineeringMachine LearningBinary Probability EstimatesClassifier ScoresText MiningNatural Language ProcessingClassification MethodInformation RetrievalData ScienceData MiningPattern RecognitionManagementStatisticsMultiple Classifier SystemAutomatic ClassificationPredictive AnalyticsNaive BayesKnowledge DiscoveryIntelligent ClassificationComputer ScienceTwo-class Probability EstimatesStatistical InferenceClassificationClassifier System
Class membership probability estimates are important for many applications of data mining in which classification outputs are combined with other sources of information for decision-making, such as example-dependent misclassification costs, the outputs of other classifiers, or domain knowledge. Previous calibration methods apply only to two-class problems. Here, we show how to obtain accurate probability estimates for multiclass problems by combining calibrated binary probability estimates. We also propose a new method for obtaining calibrated two-class probability estimates that can be applied to any classifier that produces a ranking of examples. Using naive Bayes and support vector machine classifiers, we give experimental results from a variety of two-class and multiclass domains, including direct marketing, text categorization and digit recognition.
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