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"The benefits of using multi-objectivization for mining pittsburgh partial ..."
Julie Jacques et al. (2013)
- Julie Jacques, Julien Taillard, David Delerue, Laetitia Jourdan, Clarisse Dhaenens
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The benefits of using multi-objectivization for mining pittsburgh partial classification rules in imbalanced and discrete data. GECCO 2013: 543-550
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