Adaptive Interventions Reducing Social Identity Threat to Increase Equity in Higher Distance Education

Laura Froehlich, Sebastian Weydner-Volkmann
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Abstract

Educational disparities between traditional and non-traditional student groups in higher distance education can potentially be reduced by alleviating social identity threat and strengthening students’ sense of belonging in the academic context. We present a use case of how Learning Analytics and Machine Learning can be applied to develop and implement an algorithm to classify students as at-risk of experiencing social identity threat. These students would be presented with an intervention fostering a sense of belonging. We systematically analyze the intervention’s intended positive consequences to reduce structural discrimination and increase educational equity, as well as potential risks based on privacy, data protection, and algorithmic fairness considerations. Finally, we provide recommendations for Higher Education Institutions to mitigate risk of bias and unintended consequences during algorithm development and implementation from an ethical perspective.
采取适应性干预措施,减少社会身份威胁,提高远程高等教育的公平性
在高等远程教育中,传统学生群体和非传统学生群体之间的教育差距有可能通过减轻社会身份威胁和加强学生在学术环境中的归属感来缩小。我们介绍了一个使用案例,说明如何应用学习分析和机器学习来开发和实施一种算法,将学生划分为面临社会身份威胁风险的学生。我们将向这些学生提供培养归属感的干预措施。我们系统分析了干预措施在减少结构性歧视和提高教育公平方面的预期积极效果,以及基于隐私、数据保护和算法公平性考虑的潜在风险。最后,我们从伦理角度为高等教育机构提供建议,以降低算法开发和实施过程中的偏见风险和意外后果。
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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