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Chinese word semantic relation classification based on multiple knowledge resources

机译:基于多知识资源的中文语义关系分类

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Chinese word semantic relation classification is an important and challenging task in the field of natural language processing. This paper describes our method to classify Chinese word semantic relation based on multiple knowledge resources at NLPCC Evaluation. Firstly, given pairs of Chinese words, we try to utilize different knowledge resources, such as Tongyici Cilin and HowNet, to classify them into four kinds of semantic relations, which are synonym, antonym, hyponym and meronym. Secondly, for those uncovered pairs of Chinese words, we translate them into English, then classify them with the help of English knowledge resources, such as WordNet and BabelNet. Experiments on the evaluation dataset at NLPCC 2017 demonstrate that the method can achieve the macro-averaged F1-Score of 0.634 and precision of 0.875. Among all of the participants, the method get the best precision, which shows its superiority over other methods on precision.
机译:中文语义关系分类是自然语言处理领域的重要又挑战性的任务。本文介绍了基于NLPCC评估的多个知识资源对中文语义关系进行分类的方法。首先,给定对中文单词,我们尝试利用不同的知识资源,如通尼西奇·辛格和Hownet,将它们分为四种语义关系,这是同义词,反义词,下匿名和同性义词。其次,对于那些未被覆盖的中文单词对,我们将它们翻译成英文,然后在英语知识资源的帮助下对它们进行分类,例如Wordnet和Babelnet。 NLPCC 2017的评估数据集上的实验证明了该方法可以实现0.634的宏观平均F1分数和0.875的精度。在所有参与者中,该方法获得最佳精度,这表明其在精度上的其他方法的优势。

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