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Transductive Learning for the Identification of Word Sense Temporal Orientation

机译:转换学习识别词语读取时间定位

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The ability to capture the time information conveyed in natural language is essential to many natural language processing applications such as information retrieval, question answering, automatic summarization, targeted marketing, loan repayment forecasting, and understanding economic patterns. In this paper, we propose a graph-based semi-supervised classification strategy that makes use of WordNet definitions or 'glosses', its conceptual-semantic and lexical relations to supplement WordNet entries with information on the temporality of its word senses. Intrinsic evaluation results show that the proposed approach outperforms prior semi-supervised, nongraph classification approaches to the temporality recognition of word senses, and confirm the soundness of the proposed approach.
机译:捕获以自然语言传达的时间信息的能力对于许多自然语言处理应用是必不可少的,例如信息检索,问题回答,自动摘要,有针对性的营销,贷款还款预测以及了解经济模式。 在本文中,我们提出了一种基于图形的半监督分类策略,它利用Wordnet定义或“幻盘”,其概念语义和词汇关系,以补充Wordnet条目,其中包含有关其词语的时间性的信息。 内在评估结果表明,建议的方法优于先前的半监督,非图形分类方法,以临时识别词感应,并确认所提出的方法的健全性。

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