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Information Retrieval and Extraction on COVID-19 Clinical Articles Using Graph Community Detection and Bio-BERT Embeddings

机译:使用Graph界检测和Bio-Bert Embeddings的Covid-19临床制品的信息检索和提取

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In this paper, we present an information retrieval system on a corpus of scientific articles related to COVID-19. We build a similarity network on the articles where similarity is determined via shared citations and biological domain-specific sentence embeddings. Ego-splitting community detection on the article network is employed to cluster the articles and then the queries are matched with the clusters. Extractive summarization using BERT and PageRank methods is used to provide responses to the query. We also provide a Question-Answer bot on a small set of intents to demonstrate the efficacy of our model for an information extraction module.
机译:在本文中,我们在与Covid-19有关的科学文章的语料库中提出了一种信息检索系统。我们在通过共享引用和生物域的特定句子嵌入确定相似性的文章上构建相似性网络。在物品网络上采用自我分裂社区检测来聚类文章,然后查询与集群匹配。使用BERT和PageRank方法的提取汇总用于为查询提供响应。我们还在一小组意图提供了一个问题答案机器人,以展示我们对信息提取模块的模型的功效。

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