Combining binary classifiers with imprecise probabilities
2011
Destercke , Sébastien(auteur de correspondance) (INRA , Montpellier (France). UMR 1208 Ingénierie des Agropolymères et Technologies Emergentes) | Quost , Benjamin (Université de Technologie de Compiège, Compiègne(France). Centre de Recherches de Royallieu)
This paper proposes a simple framework to combine binary classifiers whose outputs are imprecise probabilities (or are transformed into some imprecise probabilities, e.g., by using confidence intervals). This combination comes down to solve linear programs describing constraints over events (here, subsets of classes). The number of constraints grows linearly with the number of classifiers, making the proposed framework tractable even for problems involving a relatively large number of classes.
Show more [+] Less [-]Bibliographic information
This bibliographic record has been provided by Institut national de la recherche agronomique