首页> 外文期刊>International Journal of Information Management >ERDMAS: An exemplar-driven institutional research data management and analysis strategy
【24h】

ERDMAS: An exemplar-driven institutional research data management and analysis strategy

机译:ERDMAS:以范例驱动的机构研究数据管理和分析策略

获取原文
获取原文并翻译 | 示例
           

摘要

Devising fit-for-purpose research data management strategies within a university is challenging. This is because the five 'Vs' for generated research data; its Volume, Variety, Velocity, Veracity and its Value must be constantly considered. Invariably, a combination of data V's for any given research endeavour determine how best to manage it appropriately addressing archiving, compliance, security, privacy, sharing, reuse and so forth. As such, institutions are faced with defining, shaping and refining strategies and practicies to ensure there are consistent and adequate research data management polices and guidelines in place for their researchers. FAIR data principles are very important for embracing open data opportunities, but more broadly, research data management practices need to be established in a comprehensive way. Additionally, new ICT options have rapidly become available where institutions can make considered choices on whether to continue to use 'on prem', private Cloud or public Cloud infrastructure. If a hybrid approach is adopted, then the potential impact on existing institutional research data management strategies must be continually assessed and revised accordingly. Getting the balance right between developing a relevant institutional policy on the one hand yet also dynamically catering for the eclectic research data management and analytics needs of researchers and their evolving interactions with external collaborators on the other, must be continually navigated. In this manuscript, an exemplar-driven research data management and analytics conceptual framework is introduced. A key feature of this framework is that it is couched in two dimensions. On one axis is the 'standard' linear approach of developing the research data management policy, guidelines, procedures, audit and risk assessment and an options matrix. Importantly, a second axis comprising a researcher-driven focus is introduced where exemplar research activities are used to define 'classes' of research data management and analysis requirements. This exemplar-driven dimension enables an ongoing system-wide comparative review to occur in parallel that can continually inform policy and guidelines refinement.
机译:在大学内部设计适合目的的研究数据管理策略具有挑战性。这是因为生成研究数据的五个“ V”;必须不断考虑其体积,多样性,速度,准确性及其价值。始终,对于任何给定的研究工作,数据V的组合都决定了如何最好地对其进行适当地管理,以解决归档,法规遵从性,安全性,隐私,共享,重用等问题。因此,各机构面临着定义,塑造和完善策略和实践的方法,以确保为其研究人员制定一致,适当的研究数据管理政策和指南。 FAIR数据原则对于拥抱开放数据机会非常重要,但是更广泛地讲,研究数据管理实践需要以一种全面的方式来建立。此外,新的ICT选项已迅速可用,机构可以在此基础上选择是否继续使用“本地”,私有云或公共云基础结构。如果采用混合方法,则必须不断评估和修订对现有机构研究数据管理策略的潜在影响。在一方面要制定相关的机构政策,还要动态地满足折衷的研究数据管理和研究人员的分析需求,以及另一方面他们与外部合作者之间不断发展的互动之间取得平衡,必须不断地进行导航。在此手稿中,介绍了一个示例驱动的研究数据管理和分析概念框架。该框架的一个关键特征是它分为两个维度。在一个轴上是制定研究数据管理政策,指南,程序,审计和风险评估以及选择矩阵的“标准”线性方法。重要的是,引入了第二根轴,包括研究人员驱动的重点,其中示例性研究活动用于定义研究数据管理和分析要求的“类”。此示例驱动的维度使正在进行的系统范围内的比较审查能够并行进行,从而可以不断为政策和准则的完善提供信息。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号