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Measuring scientific prestige of papers with time-aware mutual reinforcement ranking model

机译:用时间感知的相互加固排名模型测量纸张的科学声望

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摘要

Quantitative methods for determining the quality of scientific publications evolved gradually from popularity methods to prestige methods. However, existing methods have some drawbacks, such as inability to account for important factors and mutual reinforcement between different entities, and limitation of using novel information techniques like artificial intelligence (AI) methods. This study proposes an intelligent time-aware mutual reinforcement ranking (TAMRR) model that accounts for mutual reinforcement, and temporal factors, such as the time of citation, to measure the prestige of scientific papers. The method also considers the distribution of the co-authors' contributions, which indicates the credit allocation of citations. Moreover, mutual reinforcement which indicates interactive impact between different entities by means of the extension of an AI algorithm, i.e., Hyperlink-Induced Topics Search (HITS) algorithm, is adopted to further explore the interactions of papers, journals and authors. Another AI algorithm, i.e., PageRank, is also enhanced to measure the prestige of papers, journals, and authors in citation networks, which are then used as the inputs to the modified HITS. Experiments on temporal factors and heterogeneous networks reveal that these factors are likely to be informative in prestige measurements. Analysis of correlations suggests that our proposed intelligent ranking method is reasonable. This study offers an intelligent method for researchers, authors, and entrepreneurs to quantify the importance of scientific papers and the conclusions are likely to be of importance for researchers in both the academic and enterprise domains.
机译:确定科学出版物质量的定量方法从普及方法逐渐发展到声望方法。然而,现有方法具有一些缺点,例如无法考虑不同实体之间的重要因素和相互加强,以及利用人工智能(AI)方法的新颖信息技术的限制。本研究提出了一种智能时光的相互加强排名(Tamrr)模型,用于衡量衡量科学论文的声望的互连和颞区因素,措施,衡量科学论文的声望。该方法还考虑了共同作者的贡献的分布,这表明了引用的信用分配。此外,通过扩展AI算法,即超链接引起的主题搜索(HITS)算法,指示不同实体之间的交互式冲击的相互钢筋,即进一步探索论文,期刊和作者的互动。另一种AI算法,即PageRank,也增强了衡量引文网络中的文件,期刊和作者的声望,然后将其用作修改命中的输入。关于时间因素和异构网络的实验表明,这些因素可能是威胁测量中的信息。相关性分析表明,我们提出的智能排名方法是合理的。本研究为研究人员,作者和企业家提供了一种智能方法,以量化科学论文的重要性,并且对学术和企业领域的研究人员来说可能具有重要性。

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