Abdul Hameed, Muhammad Omar, Muhammad Bilal, Han Woo Park
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引用次数: 0
Abstract
The evaluation of scientific journals poses challenges owing to the existence of various impact measures. This is because journal ranking is a multidimensional construct that may not be assessed effectively using a single metric such as an impact factor. A few studies have proposed an ensemble of metrics to prevent the bias induced by an individual metric. In this study, a multi-metric journal ranking method based on the standardized average index (SA index) was adopted to develop an extended standardized average index (ESA index). The ESA index utilizes six metrics: the CiteScore, Source Normalized Impact per Paper (SNIP), SCImago Journal Rank (SJR), Hirsh index (H-index), Eigenfactor Score, and Journal Impact Factor from three well-known databases (Scopus, SCImago Journal & Country Rank, and Web of Science). Experiments were conducted in two computer science subject areas: (1) artificial intelligence and (2) computer vision and pattern recognition. Comparing the results of the multi-metric-based journal ranking system with the SA index, it was demonstrated that the multi-metric ESA index exhibited high correlation with all other indicators and significantly outperformed the SA index. To further evaluate the performance of the model and determine the aggregate impact of bibliometric indices with the ESA index, we employed unsupervised machine learning techniques such as clustering coupled with principal component analysis (PCA) and t-distributed stochastic neighbor embedding (t-SNE). These techniques were utilized to measure the clustering impact of various bibliometric indicators on both the complete set of bibliometric features and the reduced set of features. Furthermore, the results of the ESA index were compared with those of other ranking systems, including the internationally recognized Scopus, SJR, and HEC Journal Recognition System (HJRS) used in Pakistan. These comparisons demonstrated that the multi-metric-based ESA index can serve as a valuable reference for publishers, journal editors, researchers, policymakers, librarians, and practitioners in journal selection, decision making, and professional assessment.
由于存在各种影响衡量标准,科学期刊的评估工作面临挑战。这是因为期刊排名是一个多维度的结构,可能无法通过影响因子等单一指标进行有效评估。一些研究提出了组合指标,以防止单个指标引起的偏差。本研究采用了基于标准化平均指数(SA 指数)的多指标期刊排名方法,开发了扩展标准化平均指数(ESA 指数)。ESA 指数采用了六个指标:CiteScore、Source Normalized Impact per Paper (SNIP)、SCImago Journal Rank (SJR)、Hirsh index (H-index)、Eigenfactor Score 和 Journal Impact Factor(来自三个知名数据库(Scopus、SCImago Journal & Country Rank 和 Web of Science))。在两个计算机科学学科领域进行了实验:(1) 人工智能和 (2) 计算机视觉与模式识别。将基于多指标的期刊排名系统的结果与 SA 指数进行比较,结果表明,多指标 ESA 指数与所有其他指标都有很高的相关性,并且明显优于 SA 指数。为了进一步评估该模型的性能,并确定文献计量指数与 ESA 指数的综合影响,我们采用了无监督机器学习技术,如聚类与主成分分析(PCA)和 t 分布随机邻域嵌入(t-SNE)。我们利用这些技术来衡量各种文献计量指标对完整的文献计量特征集和缩小的特征集的聚类影响。此外,ESA 指数的结果还与其他排名系统的结果进行了比较,包括国际公认的 Scopus、SJR 和巴基斯坦使用的 HEC 期刊识别系统(HJRS)。这些比较表明,基于多指标的 ESA 指数可为出版商、期刊编辑、研究人员、决策者、图书馆员和从业人员在期刊选择、决策和专业评估方面提供有价值的参考。