Suppr超能文献

材料科学与工程领域研究数据的搜索、复用与共享:一项定性访谈研究。

Search, reuse and sharing of research data in materials science and engineering-A qualitative interview study.

机构信息

Virtual Vehicle Research GmbH, Graz, Austria.

出版信息

PLoS One. 2020 Sep 15;15(9):e0239216. doi: 10.1371/journal.pone.0239216. eCollection 2020.

Abstract

Open research data practices are a relatively new, thus still evolving part of scientific work, and their usage varies strongly within different scientific domains. In the literature, the investigation of open research data practices covers the whole range of big empirical studies covering multiple scientific domains to smaller, in depth studies analysing a single field of research. Despite the richness of literature on this topic, there is still a lack of knowledge on the (open) research data awareness and practices in materials science and engineering. While most current studies focus only on some aspects of open research data practices, we aim for a comprehensive understanding of all practices with respect to the considered scientific domain. Hence this study aims at 1) drawing the whole picture of search, reuse and sharing of research data 2) while focusing on materials science and engineering. The chosen approach allows to explore the connections between different aspects of open research data practices, e.g. between data sharing and data search. In depth interviews with 13 researchers in this field were conducted, transcribed verbatim, coded and analysed using content analysis. The main findings characterised research data in materials science and engineering as extremely diverse, often generated for a very specific research focus and needing a precise description of the data and the complete generation process for possible reuse. Results on research data search and reuse showed that the interviewees intended to reuse data but were mostly unfamiliar with (yet interested in) modern methods as dataset search engines, data journals or searching public repositories. Current research data sharing is not open, but bilaterally and usually encouraged by supervisors or employers. Project funding does affect data sharing in two ways: some researchers argue to share their data openly due to their funding agency's policy, while others face legal restrictions for sharing as their projects are partly funded by industry. The time needed for a precise description of the data and their generation process is named as biggest obstacle for data sharing. From these findings, a precise set of actions is derived suitable to support Open Data, involving training for researchers and introducing rewards for data sharing on the level of universities and funding bodies.

摘要

开放研究数据实践是科学工作中一个相对较新但仍在不断发展的领域,其在不同科学领域的应用差异很大。在文献中,对开放研究数据实践的调查涵盖了从涵盖多个科学领域的大型实证研究到分析单个研究领域的较小、深入研究的整个范围。尽管关于这个主题的文献很丰富,但在材料科学和工程领域,人们对(开放)研究数据意识和实践仍然知之甚少。虽然大多数当前的研究仅关注开放研究数据实践的某些方面,但我们旨在全面了解所考虑科学领域的所有实践。因此,本研究旨在:1)描绘研究数据搜索、重用和共享的全貌;2)重点关注材料科学和工程。所选择的方法允许探索开放研究数据实践不同方面之间的联系,例如数据共享和数据搜索之间的联系。对该领域的 13 名研究人员进行了深入访谈,逐字记录,使用内容分析进行编码和分析。主要发现将材料科学和工程中的研究数据描述为极其多样化,通常是为特定的研究重点生成的,并且需要对数据和完整的生成过程进行精确描述,以便可能进行重用。关于研究数据搜索和重用的结果表明,受访者打算重用数据,但对现代方法(如数据集搜索引擎、数据期刊或搜索公共存储库)不太熟悉(但感兴趣)。当前的研究数据共享并不开放,而是双边的,通常由主管或雇主鼓励。项目资金以两种方式影响数据共享:一些研究人员认为由于其资助机构的政策,他们需要公开共享数据,而另一些人则由于其部分项目由工业界资助,因此在共享方面面临法律限制。精确描述数据及其生成过程所需的时间被认为是数据共享的最大障碍。从这些发现中,得出了一套适合支持开放数据的具体行动,包括对研究人员的培训以及在大学和资助机构层面引入数据共享奖励。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dacb/7491734/fd1435b3c500/pone.0239216.g001.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验