利用知识改进生物医学预训练语言模型

Zheng Yuan, Yijia Liu, Chuanqi Tan, Songfang Huang, Fei Huang
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引用次数: 59

摘要

预训练语言模型在许多自然语言处理任务中显示出成功。许多研究都在探索如何将这些知识整合到语言模型中。在生物医学领域,专家们花了几十年的时间来建立大规模的知识库。例如,UMLS包含数百万个具有同义词的实体,并定义了实体之间的数百个关系。利用这些知识可以使各种下游任务受益,例如命名实体识别和关系提取。为此,我们提出了KeBioLM,这是一种明确利用UMLS知识库知识的生物医学预训练语言模型。具体来说,我们从PubMed摘要中提取实体并将它们链接到UMLS。然后,我们训练了一个知识感知语言模型,该模型首先应用纯文本编码层来学习实体表示,然后应用文本-实体融合编码来聚合实体表示。此外,我们还增加了实体检测和实体链接两个训练目标。基于BLURB基准的命名实体识别和关系提取实验验证了该方法的有效性。对收集到的探测数据集的进一步分析表明,我们的模型具有更好的医学知识建模能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Biomedical Pretrained Language Models with Knowledge
Pretrained language models have shown success in many natural language processing tasks. Many works explore to incorporate the knowledge into the language models. In the biomedical domain, experts have taken decades of effort on building large-scale knowledge bases. For example, UMLS contains millions of entities with their synonyms and defines hundreds of relations among entities. Leveraging this knowledge can benefit a variety of downstream tasks such as named entity recognition and relation extraction. To this end, we propose KeBioLM, a biomedical pretrained language model that explicitly leverages knowledge from the UMLS knowledge bases. Specifically, we extract entities from PubMed abstracts and link them to UMLS. We then train a knowledge-aware language model that firstly applies a text-only encoding layer to learn entity representation and then applies a text-entity fusion encoding to aggregate entity representation. In addition, we add two training objectives as entity detection and entity linking. Experiments on the named entity recognition and relation extraction tasks from the BLURB benchmark demonstrate the effectiveness of our approach. Further analysis on a collected probing dataset shows that our model has better ability to model medical knowledge.
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