论文标题
基于文学的发现的科学分析和知识映射(1986-2020)
Scientometric analysis and knowledge mapping of literature-based discovery (1986-2020)
论文作者
论文摘要
基于文学的发现(LBD)旨在发现不同文献集之间有价值的潜在关系。本文介绍了LBD研究的第一个包容性科学计量学概述。我们利用一种综合的科学计量方法,该方法结合了CiteSpace来系统地分析过去四十年(1986 - 2020年)的LBD文献。手动清洁后,我们从六个书目数据库和两个预印刷服务器中总共检索了409个文档。根据每年发表的论文:孵化(1986-2003),发展中(2004-2008)和成熟阶段(2009-2020),LBD的35年历史可以分为三个阶段。年度出版物遵循Price的法律。共同创作网络展示了许多子网,表明LBD研究由许多中小型群体组成,其中包括很少合作。科学映射表明,LBD中的主流研究已从新千年开始时从基线共发生的方法转变为基于语义的方法。在过去的十年中,我们可以观察LBD倾向于现代网络科学思想。从应用的意义上讲,LBD越来越多地用于预测不良药物反应和药物重新利用。除了理论考虑之外,研究人员还为基于Web的LBD应用程序的开发付出了很多努力。如今,LBD正变得越来越跨学科,涉及信息科学,科学计量学和机器学习的方法。不幸的是,LBD主要限于生物医学领域。级联的引文扩展宣布了LBD中新兴的主题,宣布了深度学习和可解释的人工智能。结果表明LBD仍在增长和发展。
Literature-based discovery (LBD) aims to discover valuable latent relationships between disparate sets of literatures. This paper presents the first inclusive scientometric overview of LBD research. We utilize a comprehensive scientometric approach incorporating CiteSpace to systematically analyze the literature on LBD from the last four decades (1986-2020). After manual cleaning, we have retrieved a total of 409 documents from six bibliographic databases and two preprint servers. The 35 years' history of LBD could be partitioned into three phases according to the published papers per year: incubation (1986-2003), developing (2004-2008), and mature phase (2009-2020). The annual production of publications follows Price's law. The co-authorship network exhibits many subnetworks, indicating that LBD research is composed of many small and medium-sized groups with little collaboration among them. Science mapping reveals that mainstream research in LBD has shifted from baseline co-occurrence approaches to semantic-based methods at the beginning of the new millennium. In the last decade, we can observe the leaning of LBD towards modern network science ideas. In an applied sense, the LBD is increasingly used in predicting adverse drug reactions and drug repurposing. Besides theoretical considerations, the researchers have put a lot of effort into the development of Web-based LBD applications. Nowadays, LBD is becoming increasingly interdisciplinary and involves methods from information science, scientometrics, and machine learning. Unfortunately, LBD is mainly limited to the biomedical domain. The cascading citation expansion announces deep learning and explainable artificial intelligence as emerging topics in LBD. The results indicate that LBD is still growing and evolving.