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ANU-CSIRO at MEDIQA 2019: Question Answering Using Deep Contextual Knowledge

机译:ANU-CSIRO在MEDIQA 2019上:使用深度上下文知识进行问题解答

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We report on our system for textual inference and question entailment in the medical domain for the ACL BioNLP 2019 Shared Task, MEDIQA. Textual inference is the task of finding the semantic relationships between pairs of text. Question entailment involves identifying pairs of questions which have similar semantic content. To improve upon medical natural language inference and question entailment approaches to further medical question answering, we propose a system that incorporates open-domain and biomedical domain approaches to improve semantic understanding and ambiguity resolution. Our models achieve 80% accuracy on medical natural language inference (6.5% absolute improvement over the original baseline), 48.9% accuracy on recognising medical question entailment, 0.248 Spearman's rho for question answering ranking and 68.6% accuracy for question answering classification.
机译:我们报告了ACL BioNLP 2019共享任务MEDIQA在医学领域中的文本推理和问题包含系统。文本推断是查找文本对之间的语义关系的任务。问题蕴涵涉及识别具有相似语义内容的成对问题。为了改进医学自然语言推理和问题蕴涵方法来进一步回答医学问题,我们提出了一种结合开放域和生物医学领域方法以改善语义理解和歧义解决方案的系统。我们的模型在医学自然语言推理上达到80%的准确性(比原始基准提高了6.5%的绝对准确度),在识别医学问题的含义上达到48.9%的准确性,在回答问题上的排名为0.248 Spearman的rho,在回答问题的分类上达到68.6%的准确性。

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