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Lexical Sememe Prediction with RNN and Modern Chinese Dictionary

机译:RNN和现代汉语词典的词素预测

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Knowledge base HowNet defines sememes as the minimum semantic units of words or phrases. Linguists have put many efforts into manually annotating sememes for words. Although automatically methods have been proposed to help solve this labor-intensive and time-consuming work of manually annotating sememes, the field is not mature enough. To the best of our knowledge, only three models have been proposed to solve automatically sememe prediction, and some input information and label structure are not fully used. We propose Sememe Prediction with Sentence Embedding and Chinese Dictionary (SPSECD), an end-to-end neural network which implements sentence embedding and sememe prediction in a unified model. To the best of our knowledge, SPSECD is the first model which treats words with polysemy differently on sememe prediction task. Before predicting sememes, our model adds the definition sentence from a word in a Chinese Dictionary, and we use Recurrent Neural Network to learning the embedding of the sentence. With the help of dictionary auxiliary information, our model can aware which meaning the word with polysemy focus on because of the different meanings of a word have a different definition in the Chinese Dictionary, and then our model can choose better sememes for the specific meaning of a word. Experiments show that our model achieves state-of-the-art performances.
机译:知识库知网将词义定义为单词或短语的最小语义单位。语言学家在手动注释单词的词义方面付出了很多努力。尽管已经提出了自动方法来帮助解决人工注释缩位词的劳动密集型和费时的工作,但是该领域还不够成熟。据我们所知,仅提出了三种模型来解决自动的音素预测,并且一些输入信息和标签结构没有得到充分利用。我们提出了带有句子嵌入和中文字典(SPSECD)的语素预测,这是一个在统一模型中实现句子嵌入和语素预测的端到端神经网络。据我们所知,SPSECD是第一个在音素预测任务上对多义词进行不同处理的模型。在预测音素之前,我们的模型在汉语词典中添加了单词中的定义句子,然后使用递归神经网络学习该句子的嵌入。借助词典辅助信息,我们的模型可以知道由于单词的不同含义在汉语词典中具有多义词的单词的含义不同,因此我们的模型可以针对单词的特定含义选择更好的义素。一个字。实验表明,我们的模型实现了最先进的性能。

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