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Exploiting label dependency and feature similarity for multi-label classification
2014
2014 International Conference on Advances in Computing, Communications and Informatics (ICACCI)
Multi-label classification is an emerging research area in which an object may belong to more than one class simultaneously. Existing methods either consider feature similarity or label similarity for label set prediction. We propose a strategy to combine both k-Nearest Neighbor (kNN) algorithm and multiple regression in an efficient way for multi-label classification. kNN works well in feature space and multiple regression works well for preserving label dependent information with generated
doi:10.1109/icacci.2014.6968582
dblp:conf/icacci/NedungadiH14
fatcat:f6l5wqmwhzgzpkyh7dq4x6t2ze