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Decision functions for chain classifiers based on Bayesian networks for multi-label classification

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Fig. 2. Decisión  b o u n d a r y of NB classifler in Example 1.
Table of notations.
Fig. 5. Decisión  b o u n d a r i e s for  t h e  t w o NB classifiers in Example 6, black for Ci  a n d grey for C 2
Fig. 6. Example of naive BAN chain classifler with  t h r e e classes and three predictor variables

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