基于远程监督的数据集实体识别

Pengcheng Li, Qikai Liu, Qikai Cheng, Wei Lu
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引用次数: 4

摘要

本文旨在识别科学文献中的数据集实体。为了解决现有研究中由于缺乏训练语料库而导致的识别能力差的问题,提出了一种基于远程监督学习的方法,从开放领域的大规模科学文献中自动识别数据集实体。设计/方法/方法首先,作者使用字典结合自举策略来创建一个标记语料库来应用监督学习。其次,采用基于BERT的双向编码器表示神经模型自动识别科学文献中的数据集实体;最后,引入实体替换和实体屏蔽两种数据增强技术,增强模型的通用性,提高数据集实体的识别能力。在缺乏训练数据的情况下,本文提出的方法可以有效地识别大规模科学论文中的数据集实体。基于bert的矢量表示和数据增强技术使命名实体识别模型的通用性和鲁棒性得到了显著提高,特别是在长尾数据集实体识别方面。原创性/价值为科学文献中数据集实体的自动识别提供了一种实用的研究方法。据作者所知,这是第一次尝试将远程学习应用于数据集实体识别的研究。作者引入了一种鲁棒的矢量化表示和两种数据增强策略(实体替换和实体屏蔽)来解决远程监督学习方法固有的问题,而现有的研究大多忽略了这一问题。实验结果表明,该方法有效地提高了对数据集实体,特别是长尾数据集实体的识别能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data set entity recognition based on distant supervision
Purpose This paper aims to identify data set entities in scientific literature. To address poor recognition caused by a lack of training corpora in existing studies, a distant supervised learning-based approach is proposed to identify data set entities automatically from large-scale scientific literature in an open domain. Design/methodology/approach Firstly, the authors use a dictionary combined with a bootstrapping strategy to create a labelled corpus to apply supervised learning. Secondly, a bidirectional encoder representation from transformers (BERT)-based neural model was applied to identify data set entities in the scientific literature automatically. Finally, two data augmentation techniques, entity replacement and entity masking, were introduced to enhance the model generalisability and improve the recognition of data set entities. Findings In the absence of training data, the proposed method can effectively identify data set entities in large-scale scientific papers. The BERT-based vectorised representation and data augmentation techniques enable significant improvements in the generality and robustness of named entity recognition models, especially in long-tailed data set entity recognition. Originality/value This paper provides a practical research method for automatically recognising data set entities in scientific literature. To the best of the authors’ knowledge, this is the first attempt to apply distant learning to the study of data set entity recognition. The authors introduce a robust vectorised representation and two data augmentation strategies (entity replacement and entity masking) to address the problem inherent in distant supervised learning methods, which the existing research has mostly ignored. The experimental results demonstrate that our approach effectively improves the recognition of data set entities, especially long-tailed data set entities.
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