Networks in Learning Analytics: Where Theory, Methodology, and Practice Intersect

Bodong Chen, Oleksandra Poquet
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引用次数: 7

Abstract

Network analysis has contributed to the emergence of learning analytics. In this editorial, we briefly introduce network science as a field and situate it within learning analytics. Drawing on the Learning Analytics Cycle, we highlight that effective application of network science methods in learning analytics involves critical considerations of learning processes, data, methods and metrics, and interventions, as well as ethics and value systems surrounding these areas. Careful work must meaningfully situate network methods and interventions within the theoretical assumptions explaining learning, as well as within pedagogical and technological factors shaping learning processes. The five empirical papers in the special section demonstrate diverse applications of network analysis, and the invited commentaries from cognitive network science and physics education research further discuss potential synergies between learning analytics and other sister fields with a shared interest in leveraging network science. We conclude by discussing opportunities to strengthen the rigour of network-based learning analytics projects, expand current work into nascent areas, and achieve more impact by holistically addressing the full cycle of learning analytics.
学习分析中的网络:理论、方法和实践的交集
网络分析促进了学习分析的出现。在这篇社论中,我们简要介绍了网络科学作为一个领域,并将其置于学习分析中。借鉴学习分析周期,我们强调网络科学方法在学习分析中的有效应用涉及对学习过程、数据、方法和度量、干预以及围绕这些领域的伦理和价值体系的关键考虑。仔细的工作必须有意义地将网络方法和干预置于解释学习的理论假设之中,以及塑造学习过程的教学和技术因素之中。特别部分的五篇实证论文展示了网络分析的不同应用,来自认知网络科学和物理教育研究的受邀评论进一步讨论了学习分析和其他姊妹领域之间的潜在协同效应,这些领域在利用网络科学方面有着共同的兴趣。最后,我们讨论了加强基于网络的学习分析项目严密性的机会,将当前的工作扩展到新兴领域,并通过全面解决学习分析的整个周期来实现更大的影响。
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