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Syntax-based Transfer Learning for the Task of Biomedical Relation Extraction

机译:基于句法的转移学习用于生物医学关系提取任务

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Transfer learning (TL) proposes to enhance machine learning performance on a problem, by reusing labeled data originally designed for a related problem. In particular, domain adaptation consists, for a specific task, in reusing training data developed for the same task but a distinct domain. This is particularly relevant to the applications of deep learning in Natural Language Processing, because those usually require large annotated corpora that may not exist for the targeted domain, but exist for side domains. In this paper, we experiment with TL for the task of Relation Extraction (RE) 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 RE tasks and equal performances for two others, for which few annotated data are available. Furthermore, we propose an analysis of the role that syntactic features may play in TL for RE.
机译:转移学习(TL)提议通过重用最初为相关问题设计的带标签数据来提高问题的机器学习性能。特别地,对于特定任务,领域适应包括重新使用针对相同任务但不同领域而开发的训练数据。这与深度学习在自然语言处理中的应用特别相关,因为深度学习通常需要使用大型带注释的语料库,而这些语料对于目标域可能不存在,但对于边域而言则存在。在本文中,我们使用TreeLSTM模型对TL进行实验,以从生物医学文本中提取关系(RE)。我们通过获得比现有技术更好的性能,在两个生物医学RE任务上获得了比现有技术更好的性能,而在其他两个可用数据上却没有同等性能的情况下,通过经验证明了TreeLSTM单独和域自适应的影响。此外,我们提出了语法功能在RE的TL中可能扮演的角色的分析。

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