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Inter-Personal Relation Extraction Model Based on Bidirectional GRU and Attention Mechanism

机译:基于双向GRU和注意力机制的人际关系提取模型

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Inter-Personal Relationship Extraction is an important part of knowledge extraction and is also the fundamental work of constructing the knowledge graph of people’s relationships. Compared with the traditional pattern recognition methods, the deep learning methods are more prominent in the relation extraction (RE) tasks. At present, the research of Chinese relation extraction technology is mainly based on the method of kernel function and Distant Supervision. In this paper, we propose a Chinese relation extraction model based on Bidirectional GRU network and Attention mechanism. Combining with the structural characteristics of the Chinese language, the input vector is input in the form of word vectors. Aiming at the problem of context memory, a Bidirectional GRU neural network is used to fuse the input vectors. The feature information of the word level is extracted from a sentence, and the sentence feature is extracted through the Attention mechanism of the word level. To verify the feasibility of this method, we use the distant supervision method to extract data from websites and compare it with existing relationship extraction methods. The experimental results show that Bi-directional GRU with Attention mechanism model can make full use of all the feature information of sentences, and the accuracy of Bi-directional GRU model is significantly higher than that of other neural network models without Attention mechanism.
机译:人际关系提取是知识提取的重要组成部分,也是构建人际关系知识图的基础工作。与传统的模式识别方法相比,深度学习方法在关系提取(RE)任务中更为突出。目前,中文关系提取技术的研究主要基于核函数和远程监督的方法。本文提出了一种基于双向GRU网络和Attention机制的中文关系提取模型。结合汉语的结构特点,输入矢量以单词矢量的形式输入。针对上下文存储的问题,双向GRU神经网络用于融合输入向量。从句子中提取单词级别的特征信息,并通过单词级别的注意力机制来提取句子特征。为了验证该方法的可行性,我们使用了远程监管方法从网站中提取数据,并将其与现有的关系提取方法进行了比较。实验结果表明,带有注意力机制的双向GRU模型可以充分利用句子的所有特征信息,双向GRU模型的准确性明显高于其他没有注意力机制的神经网络模型。

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