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BioAMA: Towards an End to End BioMedical Question Answering System

机译:生物山:走向最终生物医学问题的回答系统

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In this paper, we present a novel Biomedical Question Answering system, BioAMA: "Biomedical Ask Me Anything" on task 5b of the annual BioASQ challenge (Ba-likas et al., 2015). We focus on a wide variety of question types including factoid, list based, summary and yes/no type questions that generate both exact and well-formed 'ideal' answers. For summary-type questions, we combine effective IR-based techniques for retrieval and diversification of relevant snippets for a question to create an end-to-end system which achieves a ROUGE-2 score of 0.72 and a ROUGE-SU4 score of 0.71 on ideal answer questions (7% improvement over the previous best model). Additionally, we propose a novel Natural Language Inference (NLI) based framework to answer the yes/no questions. To train the NLI model, we also devise a transfer-learning technique by cross-domain projection of word embeddings. Finally, we present a two-stage approach to address the factoid and list type questions by first generating a candidate set using NER taggers and ranking them using both supervised and unsupervised techniques.
机译:在本文中,我们提出了一部小说生物医学问题的回答系统,生物和生物医学询问了每年生物萨克挑战的任务5B(Ba-likas等,2015)。我们专注于各种问题类型,包括事实,基于列表,摘要,是/否类型的问题,可以生成精确和形成的“理想”答案。对于摘要类型的问题,我们将有效的IR基技巧与相关片段的检索和多样化相结合,以创建一个端到端系统,实现速度为0.72的胭脂2分,胭脂-U4分数为0.71理想的回答问题(以前最好的模型提高7%)。此外,我们提出了一种新的基于自然语言推理(NLI)的框架来回答是/否问题。要培训NLI模型,我们还通过嵌入式嵌入式的跨域投影设计转移学习技术。最后,我们介绍了一种两级方法,通过首先使用Ner Taggers生成候选集并使用监督和无监督的技术进行排序来解决类别和列表类型问题。

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