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Privacy-driven Design of Learning Analytics Applications – Exploring the Design Space of Solutions for Data Sharing and Interoperability

机译:学习分析应用程序的隐私驱动设计–探索数据共享和互操作性解决方案的设计空间

摘要

Studies have shown that issues of privacy, control of data, and trust are essential to implementation of learning analytics systems. If these issues are not addressed appropriately systems will tend to collapse due to legitimacy crisis, or they will not be implemented in the first place due to resistance from learners, their parents, or their teachers. This paper asks what it means to give priority to privacy in terms of data exchange and application design and offers a conceptual tool, a Learning Analytics Design Space model, to ease the requirement solicitation and design for new learning analytics solutions. The paper argues the case for privacy-driven design as an essential part of learning analytics systems development. A simple model defining a solution as the intersection of an approach, a barrier, and a concern is extended with a process focussing on design justifications to allow for an incremental development of solutions. This research is exploratory of nature, and further validation is needed to prove the usefulness of the Learning Analytics Design Space model.
机译:研究表明,隐私,数据控制和信任问题对于实施学习分析系统至关重要。如果这些问题没有得到适当解决,则系统将由于合法性危机而趋于崩溃,或者由于学习者,其父母或老师的抵制而无法首先实施。本文提出了在数据交换和应用程序设计方面将隐私放在首位的含义,并提供了一种概念性工具,即学习分析设计空间模型,以减轻对新的学习分析解决方案的需求征询和设计。本文认为,将隐私驱动设计作为学习分析系统开发的重要组成部分。定义解决方案为方法,障碍和关注点的交集的简单模型,其扩展了针对设计合理性的过程,以允许解决方案的增量开发。这项研究是对自然的探索,需要进一步验证以证明学习分析设计空间模型的有用性。

著录项

  • 作者

    Hoel Tore; Chen Weiqin;

  • 作者单位
  • 年度 2016
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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