生物医学生成语言模型的预训练和评估

Hongyi Yuan, Zheng Yuan, Ruyi Gan, Jiaxing Zhang, Yutao Xie, Sheng Yu
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引用次数: 55

摘要

预训练语言模型是自然语言处理的重要支柱。近年来,领域内预训练已被证明有利于各种特定于领域的下游任务。在生物医学领域,自然语言生成(NLG)任务至关重要,但尚未得到充分研究。将自然语言理解(NLU)任务视为自然语言理解(NLG),通过约束语言生成或语言提示在一般领域实现令人满意的性能。我们强调在生物医学领域缺乏领域内生成语言模型和非系统生成下游基准,阻碍了研究界的发展。在这项工作中,我们引入了生成语言模型BioBART,使BART适应生物医学领域。我们整理了各种生物医学语言生成任务,包括对话、摘要、实体链接和命名实体识别。与BART相比,在PubMed摘要上进行预训练的BioBART提高了性能,并在几个任务上设置了强大的基线。此外,我们对BioBART的预训练任务进行了消融研究,发现句子排列对下游任务有负面影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BioBART: Pretraining and Evaluation of A Biomedical Generative Language Model
Pretrained language models have served as important backbones for natural language processing. Recently, in-domain pretraining has been shown to benefit various domain-specific downstream tasks. In the biomedical domain, natural language generation (NLG) tasks are of critical importance, while understudied. Approaching natural language understanding (NLU) tasks as NLG achieves satisfying performance in the general domain through constrained language generation or language prompting. We emphasize the lack of in-domain generative language models and the unsystematic generative downstream benchmarks in the biomedical domain, hindering the development of the research community. In this work, we introduce the generative language model BioBART that adapts BART to the biomedical domain. We collate various biomedical language generation tasks including dialogue, summarization, entity linking, and named entity recognition. BioBART pretrained on PubMed abstracts has enhanced performance compared to BART and set strong baselines on several tasks. Furthermore, we conduct ablation studies on the pretraining tasks for BioBART and find that sentence permutation has negative effects on downstream tasks.
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