Finally, Multi-class Multi-label Associative Classification (MMAC) [50] is an associative rule learning based covering algorithm, that recursively learns a new rule and each time removes the examples associated with the rule. Labels for the test instance are ranked according to the support of the rule that applies with the test instance. [57] extends this idea combined with lazy learning delaying the inductive process until a test instance arrives.
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