A knowledge-rich approach to identifying semantic relations between nominals

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摘要

This paper describes a state-of-the-art supervised, knowledge-intensive approach to the automatic identification of semantic relations between nominals in English sentences. The system employs a combination of rich and varied sets of new and previously used lexical, syntactic, and semantic features extracted from various knowledge sources such as WordNet and additional annotated corpora. The system ranked first at the third most popular SemEval 2007 Task – Classification of Semantic Relations between Nominals and achieved an F-measure of 72.4% and an accuracy of 76.3%. We also show that some semantic relations are better suited for WordNet-based models than other relations. Additionally, we make a distinction between out-of-context (regular) examples and those that require sentence context for relation identification and show that contextual data are important for the performance of a noun–noun semantic parser. Finally, learning curves show that the task difficulty varies across relations and that our learned WordNet-based representation is highly accurate so the performance results suggest the upper bound on what this representation can do.

论文关键词:Natural language processing,Semantic relations,Lexical semantics,Machine learning

论文评审过程:Received 23 October 2008, Revised 25 August 2009, Accepted 3 September 2009, Available online 9 October 2009.

论文官网地址:https://doi.org/10.1016/j.ipm.2009.09.002