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Tackling Biomedical Text Summarization: OAQA at BioASQ 5B

机译:解决生物医学文本摘要:BioASQ 5B上的OAQA

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摘要

In this paper, we describe our participation in phase B of task 5b of the fifth edition of the annual BioASQ challenge, which includes answering factoid, list, yes-no and summary questions from biomedical data. We describe our techniques with an emphasis on ideal answer generation, where the goal is to produce a relevant, precise, non-redundant, query-oriented summary from multiple relevant documents. We make use of extractive summarization techniques to address this task and experiment with different biomedical ontologies and various algorithms including agglomerative clustering, Maximum Marginal Relevance (MMR) and sentence compression. We propose a novel word embedding based tf-idf similarity metric and a soft positional constraint which improve our system performance. We evaluate our techniques on test batch 4 from the fourth edition of the challenge. Our best system achieves a ROUGE-2 score of 0.6534 and ROUGE-SU4 score of 0.6536.
机译:在本文中,我们描述了我们参加年度BioASQ挑战第五版任务5b的B阶段的过程,其中包括回答类事实,清单,是与否以及来自生物医学数据的简要问题。我们以理想的答案生成为重点来描述我们的技术,目标是从多个相关文档中生成相关的,精确的,非冗余的,面向查询的摘要。我们利用提取摘要技术来解决此任务,并使用不同的生物医学本体和各种算法进行实验,包括凝聚聚类,最大边际相关性(MMR)和句子压缩。我们提出了一种新颖的基于词嵌入的tf-idf相似度度量和软位置约束,以改善我们的系统性能。我们从挑战的第四版开始评估了第4批测试的技术。我们最好的系统的ROUGE-2得分为0.6534,ROUGE-SU4得分为0.6536。

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