Translating network position into performance: importance of centrality in different network configurations

Srécko Joksimovíc, A. Manataki, D. Gašević, S. Dawson, Vitomir Kovanovíc, I. F. D. Kereki
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引用次数: 88

Abstract

As the field of learning analytics continues to mature, there is a corresponding evolution and sophistication of the associated analytical methods and techniques. In this regard social network analysis (SNA) has emerged as one of the cornerstones of learning analytics methodologies. However, despite the noted importance of social networks for facilitating the learning process, it remains unclear how and to what extent such network measures are associated with specific learning outcomes. Motivated by Simmel's theory of social interactions and building on the argument that social centrality does not always imply benefits, this study aimed to further contribute to the understanding of the association between students' social centrality and their academic performance. The study reveals that learning analytics research drawing on SNA should incorporate both - descriptive and statistical methods to provide a more comprehensive and holistic understanding of a students' network position. In so doing researchers can undertake more nuanced and contextually salient inferences about learning in network settings. Specifically, we show how differences in the factors framing students' interactions within two instances of a MOOC affect the association between the three social network centrality measures (i.e., degree, closeness, and betweenness) and the final course outcome.
将网络位置转化为性能:不同网络配置中中心性的重要性
随着学习分析领域的不断成熟,相关的分析方法和技术也有相应的发展和完善。在这方面,社会网络分析(SNA)已经成为学习分析方法的基石之一。然而,尽管社会网络对促进学习过程的重要性得到了重视,但目前尚不清楚这种网络措施如何以及在多大程度上与特定的学习结果相关联。受齐美尔社会互动理论的启发,基于社会中心性并不总是意味着利益的观点,本研究旨在进一步理解学生的社会中心性与学业成绩之间的关系。研究表明,基于SNA的学习分析研究应结合描述性和统计方法,以提供对学生网络位置的更全面和整体的理解。通过这样做,研究人员可以对网络环境下的学习进行更细致入微和上下文显著的推断。具体而言,我们展示了在两个MOOC实例中构建学生互动的因素差异如何影响三种社会网络中心性度量(即程度、亲密度和中间度)与最终课程结果之间的关联。
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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