The privacy paradox and its implications for learning analytics

Yi-Shan Tsai, A. Whitelock-Wainwright, D. Gašević
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引用次数: 54

Abstract

Learning analytics promises to support adaptive learning in higher education. However, the associated issues around privacy protection, especially their implications for students as data subjects, has been a hurdle to wide-scale adoption. In light of this, we set out to understand student expectations of privacy issues related to learning analytics and to identify gaps between what students desire and what they expect to happen or choose to do in reality when it comes to privacy protection. To this end, an investigation was carried out in a UK higher education institution using a survey (N=674) and six focus groups (26 students). The study highlight a number of key implications for learning analytics research and practice: (1) purpose, access, and anonymity are key benchmarks of ethics and privacy integrity; (2) transparency and communication are key levers for learning analytics adoption; and (3) information asymmetry can impede active participation of students in learning analytics.
隐私悖论及其对学习分析的影响
学习分析有望支持高等教育中的适应性学习。然而,围绕隐私保护的相关问题,特别是它们对学生作为数据主体的影响,一直是大规模采用的障碍。鉴于此,我们开始了解学生对与学习分析相关的隐私问题的期望,并在涉及隐私保护时确定学生期望的与他们期望发生或选择做的现实之间的差距。为此,在英国一所高等教育机构开展了一项调查(N=674)和六个焦点小组(26名学生)。该研究强调了学习分析研究和实践的一些关键含义:(1)目的、访问和匿名是道德和隐私完整性的关键基准;(2)透明度和沟通是学习分析采用的关键杠杆;(3)信息不对称会阻碍学生积极参与学习分析。
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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