Corpus ID: 17517475

OMPARATIVE A NALYSIS OF C LASSIFIER F USERS

@inproceedings{Zmyslony2012OMPARATIVEAN,
  title={OMPARATIVE A NALYSIS OF C LASSIFIER F USERS},
  author={Marcin Zmyslony and Michal Wozniak and K. Jackowski},
  year={2012}
}
There are many methods of decision making by an ensemble of classifiers. The most popular are methods that have their origin in voting method, where the decision of the common classifier is a combination of individual classifiers’ outputs. This work presents comparative analysis of some classifier fusion methods based on weighted voting of classifiers’ responses and combination of classifiers’ discriminant functions. We discus different methods of producing combined classifiers based on weights… Expand

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