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Discriminative Learning for Label Sequences via Boosting
2002
Neural Information Processing Systems
This paper investigates a boosting approach to discriminative learning of label sequences based on a sequence rank loss function. The proposed method combines many of the advantages of boosting schemes with the efficiency of dynamic programming methods and is attractive both, conceptually and computationally. In addition, we also discuss alternative approaches based on the Hamming loss for label sequences. The sequence boosting algorithm offers an interesting alternative to methods based on
dblp:conf/nips/AltunHJ02
fatcat:5w2qw2gxhbal3kwy4gmsn3mv6u