Capturing their “first” dataset: A graduate course to walk PhD students through the curation of their dissertation data

IASSIST quarterly Pub Date : 2020-09-23 DOI:10.29173/iq971
Megan Sapp Nelson, N. Kong
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引用次数: 1

Abstract

The data set accompanying theses is a valuable intellectual property asset, both from the viewpoint of the PhD student, who can procure employment and build publications and research grants from the work for years to come, and the university, which owns the data and has invested in the work. However, the data set has generally not been captured as a finished product in a similar manner to the published thesis. A course has been developed which walks PhD students through the process of identifying an archival data set, selecting a repository or long term storage location, creating metadata and documentation for the data package, and the deposit process. A pre- and post assessment has been designed to ascertain the level of data literacy the students gain through curating their own dataset. PIs for the projects have input into the repositories and metadata standards selected.  The university thesis office was consulted as the course was developed, so that accurate procedures and practices are reflected throughout the course. This first of a kind class is open to students of any discipline at a Research-1 university. The resulting mixture of data types creates a unique course every time it is offered.
获取他们的“第一个”数据集:一门研究生课程,带领博士生完成论文数据的管理
论文附带的数据集是一项宝贵的知识产权资产,无论是从博士生的角度来看,他们可以在未来几年找到工作,并从工作中获得出版物和研究资助,还是从拥有数据并投资于工作的大学的角度来看。然而,数据集通常没有以与发表论文类似的方式作为成品捕获。已经开发了一门课程,指导博士生完成识别档案数据集、选择存储库或长期存储位置、为数据包创建元数据和文档以及存放过程的过程。设计了一个前后评估,以确定学生通过整理自己的数据集获得的数据素养水平。项目的pi已经输入到所选择的存储库和元数据标准中。在课程开发过程中,咨询了大学论文办公室,以便在整个课程中反映准确的程序和实践。这是研究型大学所有学科的学生都可以参加的第一门课程。所产生的混合数据类型每次提供时都会创建一个独特的课程。
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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