基于语法的生物医学关系提取迁移学习。

IF 2 3区 工程技术 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Joël Legrand, Yannick Toussaint, Chedy Raïssi, Adrien Coulet
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引用次数: 0

摘要

背景:迁移学习旨在通过重用最初为相关但不同的问题设计的标记数据来提高机器学习在问题上的性能。特别地,领域适应包括为特定任务重用为相同任务但不同领域开发的训练数据。这与深度学习在自然语言处理中的应用特别相关,因为它们通常需要大型带注释的语料库,这些语料库可能不存在于目标领域,但存在于副领域。结果:在本文中,我们使用TreeLSTM模型对生物医学文本的关系提取任务进行了迁移学习实验。我们通过在两个生物医学关系提取任务上获得比目前更好的性能,并在其他两个具有较少注释数据的任务上获得相同的性能,实证地展示了单独使用TreeLSTM和具有域自适应的影响。此外,我们还分析了句法特征在关系提取迁移学习中可能发挥的作用。结论:考虑到在生物医学领域手工标注语料库的困难,本文提出的迁移学习方法为在资源稀缺的领域中获得良好的关系提取性能提供了一种有希望的替代方法。此外,我们的分析说明了语法在迁移学习中的重要性,这是该领域对嵌入语法特征的特权方法的重要性的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Syntax-based transfer learning for the task of biomedical relation extraction.

Syntax-based transfer learning for the task of biomedical relation extraction.

Syntax-based transfer learning for the task of biomedical relation extraction.

Syntax-based transfer learning for the task of biomedical relation extraction.

Background: Transfer learning aims at enhancing machine learning performance on a problem by reusing labeled data originally designed for a related, but distinct problem. In particular, domain adaptation consists for a specific task, in reusing training data developedfor the same task but a distinct domain. This is particularly relevant to the applications of deep learning in Natural Language Processing, because they usually require large annotated corpora that may not exist for the targeted domain, but exist for side domains.

Results: In this paper, we experiment with transfer learning for the task of relation extraction from biomedical texts, using the TreeLSTM model. We empirically show the impact of TreeLSTM alone and with domain adaptation by obtaining better performances than the state of the art on two biomedical relation extraction tasks and equal performances for two others, for which little annotated data are available. Furthermore, we propose an analysis of the role that syntactic features may play in transfer learning for relation extraction.

Conclusion: Given the difficulty to manually annotate corpora in the biomedical domain, the proposed transfer learning method offers a promising alternative to achieve good relation extraction performances for domains associated with scarce resources. Also, our analysis illustrates the importance that syntax plays in transfer learning, underlying the importance in this domain to privilege approaches that embed syntactic features.

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来源期刊
Journal of Biomedical Semantics
Journal of Biomedical Semantics MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
4.20
自引率
5.30%
发文量
28
审稿时长
30 weeks
期刊介绍: Journal of Biomedical Semantics addresses issues of semantic enrichment and semantic processing in the biomedical domain. The scope of the journal covers two main areas: Infrastructure for biomedical semantics: focusing on semantic resources and repositories, meta-data management and resource description, knowledge representation and semantic frameworks, the Biomedical Semantic Web, and semantic interoperability. Semantic mining, annotation, and analysis: focusing on approaches and applications of semantic resources; and tools for investigation, reasoning, prediction, and discoveries in biomedicine.
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