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Classification of Chinese Word Semantic Relations

机译:汉语语义关系分类

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摘要

Classification of word semantic relation is a challenging task in natural language processing (NLP) field. In many practical applications, we need to distinguish words with different semantic relations. Much work relies on semantic resources such as Tongyici Cilin and HowNet, which are limited by the quality and size. Recently, methods based on word embedding have received increasing attention for their flexibility and effectiveness in many NLP tasks. Furthermore, word vector offset implies words semantic relation to some extent. This paper proposes a novel framework for identifying the Chinese word semantic relation. We combine semantic dictionary, word vector and linguistic knowledge into a classification system. We conduct experiments on the Chinese Word Semantic Relation Classification shared task of NLPCC 2017. We rank No.1 with the result of F1 value 0.859. The results demonstrate that our method is very scientific and effective.
机译:单词语义关系的分类是自然语言处理(NLP)字段中有挑战性的任务。在许多实际应用中,我们需要区分具有不同语义关系的词语。有很多工作依赖于铜绿素辛林和流产品的语义资源,这些资源受到质量和尺寸的限制。最近,基于Word Embedding的方法已经收到了许多NLP任务中的灵活性和有效性的提高。此外,Word矢量偏移在某种程度上意味着单词语义关系。本文提出了一种识别中文语义关系的新框架。我们将语义词典,词向量和语言知识相结合到分类系统中。我们对NLPCC 2017的中文语义关系分类共享任务进行实验。我们排名第一,结果为0.859。结果表明,我们的方法非常科学和有效。

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