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Incorporating HowNet-Based Semantic Relatedness Into Chinese Word Sense Disambiguation

机译:将基于HONDET的语义相关性纳入中文词感歧义

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This paper presents a semi-supervised learning method that incorporates sense knowledge into a Chinese word sense disambiguation (WSD) model. This research also effectively exploits HowNet-based semantic relatedness in order to leverage system performance. The proposed method includes Sense Colony task for improving context expansion and semantic relatedness calculating for sense feature representation. To incorporate sense knowledge into WSD, this paper employs the Semantic relatedness in a semi-supervised label propagation classifier. This research demonstrates state-of-the-art results on word sense disambiguation tasks.
机译:本文介绍了一个半监督的学习方法,将感知知识融入了汉语语音歧义(WSD)模型。该研究还有效利用基于Hownet的语义相关性,以利用系统性能。该提出的方法包括感测殖民地任务,用于改进识别特征表示计算的上下文扩展和语义相关性。为了将易感知识纳入WSD,本文采用了半监督标签传播分类器中的语义相关性。这项研究展示了最先进的结果对词感歧义任务。

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