研究分析能力(RAC)调查:使用 Rasch 模型进行开发、验证和修订

IF 1.9 Q2 EDUCATION & EDUCATIONAL RESEARCH
Katherine L. Robershaw, Min Xiao, Erin Wallett, Baron G. Wolf
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引用次数: 0

摘要

目的:随着资助机构要求开展更多的合作研究项目、更高水平的问责制以及对有限资源的争夺,高等教育领域的研究事业竞争日益激烈。因此,与高等教育中的许多其他领域一样,研究分析已成为一个领域,作为一个以数据为依据的单位,它可以更好地了解研究机构如何有效地发展其研究战略。设计/方法/方法 随着企业和其他行业纷纷采用云计算和大数据分析工具等最新数据技术为决策提供依据,高等教育中的研究管理部门也看到了采用先进数据分析技术改善机构研究的日常运作和战略推进的潜力。本文记录了一项调查的开发过程,该调查衡量了研究管理人员对高等教育和其他研究机构如何看待在研究管理职能中使用数据和分析的看法。调查的开发过程首先是对高等教育领域研究管理中数据分析的最新发展进行文献综述,从中概念化并确定研究管理中数据分析的主要组成部分。随后,将文献中的证据与新起草的相应调查项目绘制成项目矩阵。在根据主题专家小组的建议对初步调查表进行修订后,使用修订后的调查表开展了试点研究,并通过使用 Rasch 测量分析法进行了验证。最终的调查工具由六个维度和 36 个调查项目组成,并建立了合理的项目拟合度、项目分离度和可靠性。该调查方案适用于高等教育机构,以了解研究管理人员对工作场所数据分析使用文化的看法。对调查的未来修订和潜在用途提出了建议。原创性/价值有关这一主题的学术著作非常有限。在高等教育研究战略中使用数据信息和数据驱动方法是一个新兴的研究和实践领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research analytics capabilities (RAC) survey: development, validation and revision using the Rasch model

Purpose

The research enterprise within higher education is becoming more competitive as funding agencies require more collaborative research projects, higher-level of accountability and competition for limited resources. As a result, research analytics has emerged as a field, like many other areas within higher education to act as a data-informed unit to better understand how research institutions can effectively grow their research strategy. This is a new and emerging field within higher education.

Design/methodology/approach

As businesses and other industries are embracing recent advances in data technologies such as cloud computing and big data analytic tools to inform decision making, research administration in higher education is seeing a potential in incorporating advanced data analytics to improve day-to-day operations and strategic advancement in institutional research. This paper documents the development of a survey measuring research administrators’ perspectives on how higher education and other research institutions perceive the use of data and analytics within the research administration functions. The survey development process started with composing a literature review on recent developments in data analytics within the research administration in the higher education domain, from which major components of data analytics in research administration were conceptualized and identified. This was followed by an item matrix mapping the evidence from literature with corresponding, newly drafted survey items. After revising the initial survey based on suggestions from a panel of subject matter experts to review, a pilot study was conducted using the revised survey instrument and validated by employing the Rasch measurement analysis.

Findings

After revising the survey based on suggestions from the subject matter experts, a pilot study was conducted using the revised survey instrument. The resultant survey instrument consists of six dimensions and 36 survey items with an establishment of reasonable item fit, item separation and reliability. This survey protocol is useful for higher educational institutions to gauge research administrators’ perceptions of the culture of data analytics use in the workplace. Suggestions for future revisions and potential use of the survey were made.

Originality/value

Very limited scholarly work has been published on this topic. The use of data-informed and data-driven approaches with in research strategy within higher education is an emerging field of study and practice.

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来源期刊
Journal of Applied Research in Higher Education
Journal of Applied Research in Higher Education EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
4.50
自引率
11.80%
发文量
63
期刊介绍: Higher education around the world has become a major topic of discussion, debate, and controversy, as a range of political, economic, social, and technological pressures result in a myriad of changes at all levels. But the quality and quantity of critical dialogue and research and their relationship with practice remains limited. This internationally peer-reviewed journal addresses this shortfall by focusing on the scholarship and practice of teaching and learning and higher education and covers: - Higher education teaching, learning, curriculum, assessment, policy, management, leadership, and related areas - Digitization, internationalization, and democratization of higher education, and related areas such as lifelong and lifewide learning - Innovation, change, and reflections on current practices
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