Embracing Trustworthiness and Authenticity in the Validation of Learning Analytics Systems

Max van Haastrecht, Matthieu J. S. Brinkhuis, Jessica Peichl, Bernd Remmele, Marco Spruit
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引用次数: 1

Abstract

Learning analytics sits in the middle space between learning theory and data analytics. The inherent diversity of learning analytics manifests itself in an epistemology that strikes a balance between positivism and interpretivism, and knowledge that is sourced from theory and practice. In this paper, we argue that validation approaches for learning analytics systems should be cognisant of these diverse foundations. Through a systematic review of learning analytics validation research, we find that there is currently an over-reliance on positivistic validity criteria. Researchers tend to ignore interpretivistic criteria such as trustworthiness and authenticity. In the 38 papers we analysed, researchers covered positivistic validity criteria 221 times, whereas interpretivistic criteria were mentioned 37 times. We motivate that learning analytics can only move forward with holistic validation strategies that incorporate “thick descriptions” of educational experiences. We conclude by outlining a planned validation study using argument-based validation, which we believe will yield meaningful insights by considering a diverse spectrum of validity criteria.
在学习分析系统的验证中拥抱可信度和真实性
学习分析位于学习理论和数据分析之间。学习分析的内在多样性体现在一种认识论上,这种认识论在实证主义和解释主义之间取得了平衡,知识来源于理论和实践。在本文中,我们认为学习分析系统的验证方法应该认识到这些不同的基础。通过对学习分析验证研究的系统回顾,我们发现目前存在对实证效度标准的过度依赖。研究人员往往忽视解释性标准,如可信度和真实性。在我们分析的38篇论文中,研究人员提到实证效度标准221次,而提到解释效度标准37次。我们鼓励学习分析只能通过整合教育经验的“厚描述”的整体验证策略向前发展。最后,我们概述了使用基于论证的验证的计划验证研究,我们相信通过考虑不同的有效性标准,将产生有意义的见解。
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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