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Relation Classification in Knowledge Graph Based on Natural Language Text

机译:基于自然语言文本的知识图中的关系分类

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摘要

Relation classification is an important semantic processing task in natural language processing, and it is also an important task to construct knowledge graph based on natural language text. At present, the cutting-edge method in the field of natural language processing is to obtain some advanced features based on deep learning. One problem is that important features of a sentence can appear anywhere in the sentence. Another problem is that building a domain-specific knowledge map often lacks annotated data. In order to solve these problems, this paper proposes to obtain labeled corpus by distant supervision, and use bidirectional GRU to get relationship between entities. Because the corpus is Chinese so use the word vector as input. At the same time, the attention mechanism is applied to reduce the weight of the noise instance. Finally, the classification model is tested on open dataset and get a good result.
机译:关系分类是自然语言处理中的重要语义处理任务,它也是构建基于自然语言文本的知识图形的重要任务。目前,自然语言处理领域的尖端方法是基于深度学习获得一些高级功能。一个问题是句子的重要功能可以出现句子的任何地方。另一个问题是构建特定于域的知识映射通常缺乏注释数据。为了解决这些问题,本文提出了通过远程监督获得标记的语料库,并使用双向GRU获得实体之间的关系。因为语料库是中文,所以请使用单词矢量作为输入。同时,应用注意机制以减少噪声实例的权重。最后,在Open DataSet上测试了分类模型,并获得了良好的结果。

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