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Social network analysis of a gamified e-learning course: Small-world phenomenon and network metrics as predictors of academic performance

机译:游戏化电子学习课程的社交网络分析:小世界现象和网络指标可预测学习成绩

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Social networks and gamification are having an important and growing role in education. Social networks provide unknown communication and connection possibilities while games have the potential to engage students. This paper analyzes the structure of the social network resulting from a gamified social undergraduate course as well as the influence that student's position has on learning achievement. In a semester long experiment, a social networking site was delivered to students providing gamified activities and enabling social interaction and collaboration. Social network analysis was used to build the network graph and to compute four measures of the overall network and nine measures for each participant. Individual measures were then assessed as predictors of students' achievement using three different methods: correlation, principal component analysis and multiple linear regressions. The resulting social network has 167 actors and 2505 links, and it can be characterized as a small-world. All analyses agreed on the potential of structural metrics as predictors of learning achievement but they differ in the measures considered as significant. A moderate correlation was found between most centrality measures and learning achievement. (C) 2016 Elsevier Ltd. All rights reserved.
机译:社交网络和游戏化在教育中起着重要且日益重要的作用。社交网络提供了未知的交流和联系可能性,而游戏则具有吸引学生的潜力。本文分析了游戏化社会本科课程产生的社会网络的结构,以及学生的地位对学习成绩的影响。在一个学期的实验中,向学生提供了一个社交网站,提供游戏活动,并实现社交互动和协作。社交网络分析用于构建网络图并计算整个网络的四个度量,每个参与者计算九个度量。然后,使用三种不同的方法将各个指标评估为学生成绩的预测指标:相关性,主成分分析和多元线性回归。由此产生的社交网络具有167个参与者和2505个链接,可以被描述为一个小世界。所有分析都同意结构指标作为学习成绩的预测指标的潜力,但在被认为是重要的指标上却有所不同。在大多数中心性测度和学习成绩之间发现中等程度的相关性。 (C)2016 Elsevier Ltd.保留所有权利。

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