基于局部关系和全局推理的文档级关系提取

Inf. Comput. Pub Date : 2023-06-27 DOI:10.3390/info14070365
Yiming Liu, Hongtao Shan, Feng Nie, Gaoyu Zhang, G. Yuan
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引用次数: 0

摘要

目前流行的文档级关系提取方法主要是基于图结构方法或序列化模型方法进行推理,但图结构方法使模型复杂,而序列化模型方法则随着文本长度的增加而降低提取精度。为了解决这些问题,本文的目标是通过考虑所谓的“局部关系和全局推理”(简称LRGI),应用一种新的思想,开发一种新的文档级关系提取方法。即首先利用BERT预训练模型对文本进行编码,首先考虑局部上下文池和双线性群算法,得到局部关系向量,然后建立基于Floyd算法的全局推理机制,实现多路径多跳推理,得到全局推理向量,从而实现基于自适应阈值准则的多分类关系提取。以DocRED数据集为测试集,数值结果表明,与经典文档级关系提取模型(ATLOP)相比,本文提出的新方法(LRGI)的准确率为0.73,F1值为62.11,分别提高了28%和2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Document-Level Relation Extraction with Local Relation and Global Inference
The current popular approach to the extraction of document-level relations is mainly based on either a graph structure or serialization model method for the inference, but the graph structure method makes the model complicated, while the serialization model method decreases the extraction accuracy as the text length increases. To address such problems, the goal of this paper is to develop a new approach for document-level relationship extraction by applying a new idea through the consideration of so-called “Local Relationship and Global Inference” (in short, LRGI), which means that we first encode the text using the BERT pre-training model to obtain a local relationship vector first by considering a local context pooling and bilinear group algorithm and then establishing a global inference mechanism based on Floyd’s algorithm to achieve multi-path multi-hop inference and obtain the global inference vector, which allow us to extract multi-classified relationships with adaptive thresholding criteria. Taking the DocRED dataset as a testing set, the numerical results show that our proposed new approach (LRGI) in this paper achieves an accuracy of 0.73, and the value of F1 is 62.11, corresponding to 28% and 2% improvements by comparing with the classical document-level relationship extraction model (ATLOP), respectively.
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