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WTMED at MEDIQA 2019: A Hybrid Approach to Biomedical Natural Language Inference

机译:Mediqa 2019的WTMED:一种杂交方法,用于生物医学自然语言推断

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Natural language inference (NLI) is challenging, especially when it is applied to technical domains such as biomedical settings. In this paper, we propose a hybrid approach to biomedical NLI where different types of information are exploited for this task. Our base model includes a pre-trained text encoder as the core component, and a syntax encoder and a feature encoder to capture syntactic and domain-specific information. Then we combine the output of different base models to form more powerful ensemble models. Finally, we design two conflict resolution strategies when the test data contain multiple (premise, hypothesis) pairs with the same premise. We train our models on the MedNLI dataset, yielding the best performance on the test set of the MEDIQA 2019 Task 1.
机译:自然语言推断(NLI)是具有挑战性的,特别是当它应用于诸如生物医学环境的技术领域时。在本文中,我们向生物医学NLI提出了一种混合方法,其中针对此任务利用不同类型的信息。我们的基础模型包括预先训练的文本编码器,作为核心组件,以及语法编码器和特征编码器,用于捕获语法和域特定信息。然后我们结合不同基础模型的输出来形成更强大的集合模型。最后,当测试数据包含具有相同前提的多个(前提,假设)对时,我们设计了两种冲突解决策略。我们在Mednli DataSet上培训我们的模型,在Mediqa 2019任务1的测试集中产生最佳性能。

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