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Enhancing the Literature Review Using Author-Topic Profiling

机译:使用作者主题概要来增强文献综述

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In this paper, we utilize bibliographic data for identifying author-topic relations which can be used to enhance the traditional literature review. When writing a research paper, researchers often cite on the order of tens of references which do not provide the complete coverage of the research context especially when the targeted research is multidisciplinary. Author-topic profiling can help researchers discover a broader picture of their topic of interest including topical relationships and research community. We apply the Latent Dirichlet Allocation (LDA) to generate multinomial distributions over words and topics to discover author-topic relations from text collections. As an illustration, we apply the methodology to bibliographic abstracts related to Emerging Infectious Diseases (EIDs) research topic.
机译:在本文中,我们利用书目数据来识别作者与主题之间的关系,这些关系可用于增强传统文献综述。在撰写研究论文时,研究人员通常会引用数十种参考文献的顺序,而这些参考文献并未提供对研究背景的完整报道,尤其是在目标研究是多学科的情况下。作者主题概要分析可以帮助研究人员发现他们感兴趣的主题的更广泛图片,包括主题关系和研究社区。我们应用潜在狄利克雷分配(LDA)来生成单词和主题的多项式分布,以从文本集合中发现作者与主题的关系。作为说明,我们将该方法应用于与新兴传染病(EIDs)研究主题相关的书目摘要。

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