Extracting Positive and Negative Association Classification Rules from RBF Kernel
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- Extracting Positive and Negative Association Classification Rules from RBF Kernel
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Associative Classification with Statistically Significant Positive and Negative Rules
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Classification and variable selection using the mining of positive and negative association rules
Highlights- Use rules of forms A ℸ B ⇒ z o r ℸ z for feature selection and classification.
- Algorithm mining the rules is built based on equivalence classes.
- It exploits the downward closure property of negative itemsets and is complete.
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AbstractAssociation rules (ARs) have been applied to classification and variable selection. However, currently, only positive ARs are used for variable selection, while only special forms of positive and negative association rules (PNARs) are used for ...
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