科研论文被引次数预测的实证研究

IF 0.6 Q3 INFORMATION SCIENCE & LIBRARY SCIENCE Journal of Scientometric Research Pub Date : 2022-09-13 DOI:10.5530/jscires.11.2.17
M. Enduri, V. U. Sankar, K. Hajarathaiah
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引用次数: 2

摘要

引文是量化研究人员、研究论文和期刊质量影响的指标。调查文章和/或研究人员的引用是研究界的重要任务之一。因此,研究和预测科研论文的引文模式已成为科研领域的热点。在这项工作中,我们给出了一种机器学习方法来预测使用关键词的研究文章的引用。本文利用1985-2012年在各类物理评论期刊上发表的论文数据集,研究了基于论文关键词的引文影响。在这个数据集中,每个出版物由作者分配了一些PACS代码(关键词),这些代码代表了物理学的一个子领域。在这项工作中,我们研究了文章的PACS代码对文章被引的影响。我们正在对第一层(物理子领域)、第二层(物理子领域的子领域)和第三层PACS代码进行分析。我们观察到,与第一层次相比,第二层次的每对引文模式都是高度相关的。我们还得到了与第一层平均值相匹配的第三层的通用近似曲线。这条曲线看起来像是高斯函数的平移和缩放版本,并且是右倾斜的。我们还可以利用这条通用曲线来预测基于关键词的引用。
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Empirical Study on Citation Count Prediction of Research Articles
Citation is a measure that quantifies the impact of the researcher, research article and journal’s quality. Investigating the citation of articles and/or researchers is one of the important tasks in the research community. So, understanding and predicting citation patterns of research articles has become popular in scientific research fields. In this work, we give a machine learning approach to predict the citations of research articles using the keywords. We study the citation impact based on keywords motioned in the articles using the data set of publications which are published in the various physical review journals from 1985-2012. In this dataset, for each publication is allocated some PACS codes (keywords) by their authors which represent a sub-field of Physics. In this work, we are investigating the impact of PACS codes of article on article’s citation. We are performing our analysis on the first (sub-field of physics), second (sub area of sub-field of physics) and third level of PACS codes. We observed that compared to the first level, every pair of citation patterns of the second level is highly correlated. We also obtained a universal approximation curve for the third level that matches with the average value of the first level. This curve looks like a shifted and scaled version of the Gaussian function and is right skewed. We can also predict the citations based on the keywords by using this universal curve.
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来源期刊
Journal of Scientometric Research
Journal of Scientometric Research INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
1.30
自引率
12.50%
发文量
52
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