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Suggesting biomedical topics for unseen research articles based on MeSH descriptors

机译:基于MeSH描述符为看不见的研究文章建议生物医学主题

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Due to the huge number of research articles in the biomedical domain, it becomes more and more important to develop methods to find relevant articles of our specific research interests. Keyword extraction is a useful method to find important topics from documents and summarize their major information. Unfortunately, it is hard to select appropriate keywords extracted by traditional method of keyword extraction from specific research fields such as biomedical domain. Although human experts can support to understand details of the keywords, extra time should be required to read contents of the documents. In this paper, we propose a method for suggesting keyword-based topics for unseen biomedical research articles from PubMed. Our method uses MeSH descriptors to summarize each document by obtaining frequencies of them. The list of frequencies is used to make keyword suggestions for given documents based on the MeSH. In the experiments, we evaluate the performance of the method by measuring the accuracy of keyword suggestions for a given set of unseen documents.
机译:由于生物医学领域的研究论文数量众多,因此开发方法来寻找我们特定研究兴趣的相关论文变得越来越重要。关键字提取是一种从文档中查找重要主题并汇总其主要信息的有用方法。不幸的是,很难从诸如生物医学领域之类的特定研究领域中选择通过传统的关键词提取方法提取的合适的关键词。尽管人类专家可以帮助您理解关键字的详细信息,但仍需要额外的时间来阅读文档的内容。在本文中,我们提出了一种方法,用于为PubMed中看不见的生物医学研究文章建议基于关键字的主题。我们的方法使用MeSH描述符通过获取每个文档的频率来对其进行汇总。频率列表用于根据MeSH为给定文档提出关键字建议。在实验中,我们通过测量给定的一组看不见的文档的关键字建议的准确性来评估该方法的性能。

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