Title :
Experts´ boasting in trainable fusion rules
Author_Institution :
Inst. of Math. & Informatics, Acad. of Sci., Vilnius, Lithuania
Abstract :
We consider the trainable fusion rule design problem when the expert classifiers provide crisp outputs and the behavior space knowledge method is used to fuse local experts\´ decisions. If the training set is utilized to design both the experts and the fusion rule, the experts\´ outputs become too self-assured. In small sample situations, "optimistically biased" experts\´ outputs bluffs the fusion rule designer. If the experts differ in complexity and in classification performance, then the experts\´ boasting effect and can severely degrade the performance of a multiple classification system. Theoretically-based and experimental procedures are suggested to reduce the experts\´ boasting effect.
Keywords :
expert systems; generalisation (artificial intelligence); learning (artificial intelligence); pattern classification; behavior space knowledge; complexity; expert classifiers; fusion rule; generalization error; pattern recognition; resubstitution error; trainable fusion rule; training set; Aggregates; Classification tree analysis; Decision making; Decision trees; Degradation; Error correction; Feature extraction; Fuses; Pattern recognition; Voting;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2003.1227993