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Averaged one-dependence estimators / Statistical theory / Bayesian inference / Naive Bayes classifier / Machine learning / Credal set / Ensemble learning / Minimum description length / Information theory / Statistics / Bayesian statistics / Statistical classification
Date: 2012-11-12 17:31:27
Averaged one-dependence estimators
Statistical theory
Bayesian inference
Naive Bayes classifier
Machine learning
Credal set
Ensemble learning
Minimum description length
Information theory
Statistics
Bayesian statistics
Statistical classification

Credal Ensembles of Classifiers G. Corania,∗, A. Antonuccia a IDSIA Istituto Dalle Molle di Studi sull’Intelligenza Artificiale CH-6928 Manno (Lugano), Switzerland

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