数据科学领域学术机构的专题专业化

Denis Gonzalez-Argote
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引用次数: 4

摘要

导读:由于该领域对技术技能的需求不断增长,数据科学职业正在上升。数据科学职业侧重于收集、组织和分析数据,以确定模式和趋势,这使组织能够做出明智的决策并制定有效的解决方案。目的:分析在数据科学领域设有学术项目的机构的专题专业化。方法:使用Scopus数据库进行文献计量分析,旨在检查在数据科学领域设有学术项目的机构的专题专业化。采用文献计量学分析工具SciVal提取相关数据。研究时间从2012年到2021年。结果:九所高等教育机构提供数据科学领域的本科或研究生学位。RSI与Field-Weighted Citation Impact之间无相关性(r=0.05355;P = 0.8912;95% CI: -0.6331至0.6930)。因此,不能说所研究学科领域的专业化会影响研究的更大影响。另一方面,最近的认证并不影响更大的专业化(r=0.1675;P = 0.6667;95% CI: -0.5588至0.7484)。此外,在学术水平方面没有发现差异。结论:对数据科学领域设有学术项目的机构的专题专业化分析表明,该领域的科学产出较低。此外,超过一半的被分析的高等教育机构的专题专业化低于全球平均水平。这表明,这些机构要在数据科学领域实现足够的专业化并进行国际竞争,还有很长的路要走。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thematic Specialization of Institutions with Academic Programs in the Field of Data Science
Introduction: data science careers are on the rise due to the growing demand for technical skills in this area. Data science careers focus on collecting, organizing, and analyzing data to identify patterns and trends, which allows organizations to make informed decisions and develop effective solutions. Aim: to analyze the thematic specialization of institutions with academic programs in the area of data science. Methods: The Scopus database was used to conduct a bibliometric analysis aimed at examining the thematic specialization of institutions with academic programs in the field of data science. SciVal, a bibliometric analysis tool, was employed to extract the relevant data. The study period ranged from 2012 to 2021. Results: Nine higher education institutions were found to offer undergraduate or graduate degrees in the field of data science. There was no correlation found between RSI and Field-Weighted Citation Impact (r=0.05355; P=0.8912; 95% CI: -0.6331 to 0.6930). Therefore, it cannot be claimed that specialization in the subject area studied influences the greater impact of research. On the other hand, recent accreditation did not influence greater specialization (r=0.1675; P=0.6667; 95% CI: -0.5588 to 0.7484). Additionally, no differences were found regarding academic level. Conclusions: The analysis of the thematic specialization of institutions with academic programs in the field of data science shows low scientific production in this field. Moreover, more than half of the analyzed higher education institutions have thematic specialization below the global average. This suggests that there is still a long way to go for these institutions to achieve adequate specialization and compete internationally in the field of data science.
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