inria-00511188, version 1
Frequentist versus Bayesian approaches for AUC Confidence Interval Bounds
10th International Conference on Information Science, Signal Processing and their Applications (2010) 341-344
Résumé : In this paper we first present two approaches, Frequen-tist and Bayesian, to calculate the Confidence Interval (CI) of Area Under the Curve (AUC). The goal of this studyis to compare both approaches and find out if they reveal significant differences along the sample size. We first generate a large number of hypothetical cases, based on True Negative (TN), True Positive (TP), False Positive (FP) and False Negative (FN), that lead to specific AUC values (90, 85, 80, 75,etc.). We then use both Frequentist and Bayesian approach to calculate the AUC CI bounds, AUCL and AUCH, and plot them for visual comparison. Results indicate that 1) for one sample size value the Bayesian approach can have multiple AUC CI bounds values, while the Frequentist has unique set of bounds, 2) for all sample size, the AUCL and AUCU values using the Frequentist approach are consistently under-estimated compared to the Bayesian ones, and 3) for very large sample size both approaches converge toward same values.
- 1 : Signal Processing and Multimedia Communications research group (SPMC)
- University of Plymouth
- Domaine : Informatique/Théorie de l'information
Mathématiques/Théorie de l'information et codage
- Mots-clés : Receiver Operating Characteristic (ROC) – Area Under the Curve (AUC)
- inria-00511188, version 1
- http://hal.inria.fr/inria-00511188
- oai:hal.inria.fr:inria-00511188
- Contributeur : Brahim Hamadicharef
- Soumis le : Samedi 23 Octobre 2010, 20:30:01
- Dernière modification le : Dimanche 24 Octobre 2010, 07:35:44