Abstract:
There is a widely held belief in the NLP and computational linguistics communities that identifying and defining roles of predicate arguments in a sentence has a lot of p...Show MoreMetadata
Abstract:
There is a widely held belief in the NLP and computational linguistics communities that identifying and defining roles of predicate arguments in a sentence has a lot of potential for and is a significant step toward improving important applications such as document retrieval, machine translation, question answering and information extraction. In this paper, we present an semantic role labeling (SRL) system for Chinese that exploits many aspects of the rich features of the languages. Finally, we compare system based on CRFs and SVMs. The experiment yields a global SRL FB1 score of 92.89%.
Published in: 2009 International Conference on Natural Language Processing and Knowledge Engineering
Date of Conference: 24-27 September 2009
Date Added to IEEE Xplore: 06 November 2009
ISBN Information: