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NegBERT: A Transfer Learning Approach for Negation Detection and Scope Resolution

机译:negbert:否定检测和范围决议的转移学习方法

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Negation is an important characteristic of language, and a major component of information extraction from text. This subtask is of considerable importance to the biomedical domain. Over the years, multiple approaches have been explored to address this problem: Rule-based systems, Machine Learning classifiers. Conditional Random Field models, CNNs and more recently BiLSTMs. In this paper, we look at applying Transfer Learning to this problem. First, we extensively review previous literature addressing Negation Detection and Scope Resolution across the 3 datasets that have gained popularity over the years: the BioScope Corpus, the Sherlock dataset, and the SFU Review Corpus. We then explore the decision choices involved with using BERT, a popular transfer learning model, for this task, and report state-of-the-art results for scope resolution across all 3 datasets. Our model, referred to as NegBERT, achieves a token level F1 score on scope resolution of 92.36 on the Sherlock dataset, 95.68 on the BioScope Abstracts subcorpus, 91.24 on the BioScope Full Papers subcorpus, 90.95 on the SFU Review Corpus, outperforming the previous state-of-the-art systems by a significant margin. We also analyze the model's generalizability to datasets on which it is not trained.
机译:否定是语言的重要特征,以及信息提取的主要组成部分。该子批次对生物医学领域具有重要意义。多年来,已经探索了多种方法来解决这个问题:基于规则的系统,机器学习分类器。条件随机字段模型,CNN和最近Bilstms。在本文中,我们看看对这个问题的转移学习。首先,我们广泛地审查以前的文献解决了多年来越来越受欢迎的3个数据集的否定检测和范围解决方案:Sherlock DataSet和SFU评论语料库。然后,我们探索使用BERT,流行的传输学习模型,此任务涉及的决策选择,并在所有3个数据集中报告最先进的结果。我们的型号称为Negbert,在Sherlock DataSet上的范围分辨率为92.36的范围,95.68在Bioscope摘要Subcorpus上,91.24在SFOCOPE上的Subcorpus,90.95上,SFU审查语料库,优于以前的状态。 -Of-艺术系统的重要保证金。我们还分析了模型对未经培训的数据集的普遍性。

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