Differences between journal and conference in computer science: a bibliometric view based on Bayesian network

Mingyue Sun, Mingliang Yue, Tingcan Ma
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Abstract

Abstract Purpose This paper aims to investigate the differences between conference papers and journal papers in the field of computer science based on Bayesian network. Design/methodology/approach This paper investigated the differences between conference papers and journal papers in the field of computer science based on Bayesian network, a knowledge-representative framework that can model relationships among all variables in the network. We defined the variables required for Bayesian networks modeling, calculated the values of each variable based Aminer dataset (a literature data set in the field of computer science), learned the Bayesian network and derived some findings based on network inference. Findings The study found that conferences are more attractive to senior scholars, the academic impact of conference papers is slightly higher than journal papers, and it is uncertain whether conference papers are more innovative than journal papers. Research limitations The study was limited to the field of computer science and employed Aminer dataset as the sample. Further studies involving more diverse datasets and different fields could provide a more complete picture of the matter. Practical implications By demonstrating that Bayesian networks can effectively analyze issues in Scientometrics, the study offers valuable insights that may enhance researchers’ understanding of the differences between journal and conference in computer science. Originality/value Academic conferences play a crucial role in facilitating scholarly exchange and knowledge dissemination within the field of computer science. Several studies have been conducted to examine the distinctions between conference papers and journal papers in terms of various factors, such as authors, citations, h-index and others. Those studies were carried out from different (independent) perspectives, lacking a systematic examination of the connections and interactions between multiple perspectives. This paper supplements this deficiency based on Bayesian network modeling.
计算机科学期刊与会议的差异——基于贝叶斯网络的文献计量学观点
摘要目的本文旨在研究基于贝叶斯网络的计算机科学领域会议论文和期刊论文之间的差异。设计/方法论/方法本文基于贝叶斯网络研究了计算机科学领域会议论文和期刊论文之间的差异,贝叶斯网络是一个知识代表性框架,可以对网络中所有变量之间的关系进行建模。我们定义了贝叶斯网络建模所需的变量,计算了每个基于变量的Aminer数据集(计算机科学领域的文献数据集)的值,学习了贝叶斯网络,并基于网络推理得出了一些发现。研究发现,会议对资深学者更有吸引力,会议论文的学术影响力略高于期刊论文,并且不确定会议论文是否比期刊论文更具创新性。研究局限性该研究仅限于计算机科学领域,并采用Aminer数据集作为样本。涉及更多不同数据集和不同领域的进一步研究可以提供更完整的情况。实践意义通过证明贝叶斯网络可以有效地分析科学计量学中的问题,该研究提供了有价值的见解,可以增强研究人员对计算机科学期刊和会议之间差异的理解。原创性/价值学术会议在促进计算机科学领域的学术交流和知识传播方面发挥着至关重要的作用。已经进行了几项研究,从作者、引文、h指数等各种因素来检验会议论文和期刊论文之间的区别。这些研究是从不同(独立)的角度进行的,缺乏对多个角度之间的联系和相互作用的系统检查。本文在贝叶斯网络建模的基础上对这一不足进行了补充。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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