使用Altmetrics和其他指标评估研究数据的影响和质量

Q1 Social Sciences Scholarly Assessment Reports Pub Date : 2020-09-29 DOI:10.29024/SAR.13
Stacy Konkiel
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引用次数: 12

摘要

各种各样的研究数据——仪器读数、观察结果、图像、文本、视频和音频文件等等——是大多数科学进步的基础。然而,大多数研究项目的评估都是在出版层面进行的,数据尚未被视为一流的研究对象。研究界如何以及应该使用指标来了解研究数据的质量和许多潜在影响?在本文中,我们讨论了研究数据指标的研究,这些指标在正式评估实践中的优势和局限性,以及这些指标可能的意义。我们承认,在评估研究数据的影响和质量时,缺乏使用替代指标和其他指标的指导,并在缺乏正式的政府或学科政策的情况下,为有兴趣这样做的政策制定者和评估人员提供启发。研究数据是科学生产的重要组成部分,但是迄今为止,开发评估数据影响的框架的努力取得的成功有限。诸如引用、替代度量、使用统计和重用度量等指标在不同程度上强调了研究数据对其他研究人员和公众的影响。在缺乏对“质量”的共同定义的情况下,可能会使用不同的指标来衡量数据集的准确性、时效性、完整性和一致性。有兴趣为使用指标评估研究数据制定标准的政策制定者在制定解释和解释研究数据影响的指南时,应该考虑到指标的可用性和数据中的学科差异。质量度量是依赖于上下文的:它们可能根据规程、数据结构和存储库而变化。由于这个原因,没有一套可以用来衡量质量的商定指标。引文非常适合展示研究的影响,是最被广泛理解的指标。然而,标准化和促进数据引用实践的努力取得了有限的成功,导致不同学科的引文数据可用性不同。替代指标可以帮助说明公众对研究的兴趣,但研究数据的替代指标的可用性非常有限。使用统计数据通常被理解为显示对研究数据的兴趣,但是标准化这些度量的基础设施直到最近才被引入,并且并不是所有的存储库都向像DataCite这样的集中式数据代理报告他们的使用指标。重用度量在它们度量的重用类型(例如教育、学术等)方面差别很大。这类指标的收集和使用启发式最少;尽可能用定性数据来解释和解释重用。所有研究数据影响指标的解释应符合《莱顿宣言》的原则,包括考虑学科差异和数据可用性。使用数字指标评估研究数据的影响和质量尚未广泛实践,尽管研究人员普遍支持这种做法。
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Assessing the Impact and Quality of Research Data Using Altmetrics and Other Indicators
Research data in all its diversity—instrument readouts, observations, images, texts, video and audio files, and so on—is the basis for most advancement in the sciences. Yet the assessment of most research programmes happens at the publication level, and data has yet to be treated like a first-class research object. How can and should the research community use indicators to understand the quality and many potential impacts of research data? In this article, we discuss the research into research data metrics, these metrics’ strengths and limitations with regard to formal evaluation practices, and the possible meanings of such indicators. We acknowledge the dearth of guidance for using altmetrics and other indicators when assessing the impact and quality of research data, and suggest heuristics for policymakers and evaluators interested in doing so, in the absence of formal governmental or disciplinary policies. Policy highlights Research data is an important building block of scientific production, but efforts to develop a framework for assessing data’s impacts have had limited success to date. Indicators like citations, altmetrics, usage statistics, and reuse metrics highlight the influence of research data upon other researchers and the public, to varying degrees. In the absence of a shared definition of “quality”, varying metrics may be used to measure a dataset’s accuracy, currency, completeness, and consistency. Policymakers interested in setting standards for assessing research data using indicators should take into account indicator availability and disciplinary variations in the data when creating guidelines for explaining and interpreting research data’s impact. Quality metrics are context dependent: they may vary based upon discipline, data structure, and repository. For this reason, there is no agreed upon set of indicators that can be used to measure quality. Citations are well-suited to showcase research impact and are the most widely understood indicator. However, efforts to standardize and promote data citation practices have seen limited success, leading to varying rates of citation data availability across disciplines. Altmetrics can help illustrate public interest in research, but availability of altmetrics for research data is very limited. Usage statistics are typically understood to showcase interest in research data, but infrastructure to standardize these measures have only recently been introduced, and not all repositories report their usage metrics to centralized data brokers like DataCite. Reuse metrics vary widely in terms of what kinds of reuse they measure (e.g. educational, scholarly, etc). This category of indicator has the fewest heuristics for collection and use associated with it; think about explaining and interpreting reuse with qualitative data, wherever possible. All research data impact indicators should be interpreted in line with the Leiden Manifesto’s principles, including accounting for disciplinary variation and data availability. Assessing research data impact and quality using numeric indicators is not yet widely practiced, though there is generally support for the practice amongst researchers.
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Scholarly Assessment Reports
Scholarly Assessment Reports Social Sciences-Communication
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