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Label propagation via bootstrapped support vectors for semantic relation extraction between named entities
Authors:Zhou GuoDong  Qian LongHua  Zhu QiaoMing  
Affiliation:aJiangsu Provincial Key Lab for Computer Information Processing Technology, School of Computer Science and Technology, Soochow Univ. 1 ShiZi Street, Suzhou 215006, China
Abstract:This paper proposes a semi-supervised learning method for semantic relation extraction between named entities. Given a small amount of labeled data, it benefits much from a large amount of unlabeled data by first bootstrapping a moderate number of weighted support vectors from all the available data through a co-training procedure on top of support vector machines (SVM) with feature projection and then applying a label propagation (LP) algorithm via the bootstrapped support vectors and the remaining hard unlabeled instances after SVM bootstrapping to classify unseen instances. Evaluation on the ACE RDC corpora shows that our method can integrate the advantages of both SVM bootstrapping and label propagation. It shows that our LP algorithm via the bootstrapped support vectors and hard unlabeled instances significantly outperforms the normal LP algorithm via all the available data without SVM bootstrapping. Moreover, our LP algorithm can significantly reduce the computational burden, especially when a large amount of labeled and unlabeled data is taken into consideration.
Keywords:Semi-supervised learning  Semantic relation extraction  Bootstrapped support vectors  SVM bootstrapping  Label propagation
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