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Named Entity Recognition and Relation Extraction with Graph Neural Networks in Semi Structured Documents

机译:半结构化文档中的图形神经网络命名实体识别与关系

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The use of administrative documents to communicate and leave record of business information requires of methods able to automatically extract and understand the content from such documents in a robust and efficient way. In addition, the semi-structured nature of these reports is specially suited for the use of graph-based representations which are flexible enough to adapt to the deformations from the different document templates. Moreover, Graph Neural Networks provide the proper methodology to learn relations among the data elements in these documents. In this work we study the use of Graph Neural Network architectures to tackle the problem of entity recognition and relation extraction in semi-structured documents. Our approach achieves state of the art results in the three tasks involved in the process. Additionally, the experimentation with two datasets of different nature demonstrates the good generalization ability of our approach.
机译:使用管理文档沟通和留出业务信息的记录,该方法能够以强大而有效的方式从这些文件中自动提取和理解这些文件的内容。 此外,这些报告的半结构性性质专门适用于使用基于图形的表示,这足以适应来自不同文档模板的变形。 此外,图形神经网络提供了适当的方法来学习这些文档中数据元素之间的关系。 在这项工作中,我们研究了图形神经网络架构的使用来解决半结构化文档中实体识别和关系提取问题。 我们的方法实现了本领域的状态,导致过程中涉及的三个任务。 此外,具有两个不同性质数据集的实验表明了我们方法的良好泛化能力。

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