Socio-temporal dynamics in peer interaction events

Bodong Chen, Oleksandra Poquet
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引用次数: 17

Abstract

Asynchronous online discussions are broadly used to support peer interaction in online and hybrid courses. In this paper, we argue that the analysis of online peer interactions would benefit from the focus on relational events that are temporal and occur due to a range of factors. To demonstrate the possibility, we applied Relational Event Modeling (REM) to a dataset from online discussions in seven online classes. Informed by a conceptual model of social interaction in online discussions, this modeling included (a) a learner attribute capturing aspects of temporal participation, (b) social dynamics factors such as preferential attachment and reciprocity, and (c) turn-by-turn sequential patterns. Results showed that learner activity and familiarity from recent interactions affected their propensity to form ties. Turn-by-turn sequential patterns, that capture individual posting in bursts, explain how two-star network patterns form. Since two-star network patterns could further facilitate small group formation in the network, we expected the models to also capture communication in triads (i.e. triadic closure). Yet, models, devoid of the content of exchanges, did not capture the social dynamics well, and failed to predict patterns for communication across triads. By bringing in discourse features, future work can investigate the role of knowledge building behaviours in triadic closure of digital networks. This study contributes fresh insights into social interaction in online discussions, calls for attention to micro-level temporal patterns, and motivates future work to scaffold learner participation in similar contexts.
同伴互动事件中的社会时间动态
异步在线讨论在在线和混合课程中广泛用于支持同伴互动。在本文中,我们认为对在线同伴互动的分析将受益于对关系事件的关注,这些事件是暂时的,并且由于一系列因素而发生。为了证明这种可能性,我们将关系事件建模(REM)应用于七个在线课程中在线讨论的数据集。根据在线讨论中社会互动的概念模型,该模型包括(a)学习者属性捕获的时间参与方面,(b)社会动态因素,如优先依恋和互惠,以及(c)逐回合顺序模式。结果表明,学习者的活动和最近互动的熟悉程度影响了他们形成联系的倾向。逐回合的顺序模式,捕捉个人的突发事件,解释了二星网络模式是如何形成的。由于双星网络模式可以进一步促进网络中的小团体形成,我们期望这些模型也能捕获三合一的通信(即三合一闭合)。然而,缺乏交流内容的模型不能很好地捕捉社会动态,也无法预测三合会之间的交流模式。通过引入话语特征,未来的工作可以研究知识构建行为在数字网络三元封闭中的作用。这项研究为在线讨论中的社会互动提供了新的见解,呼吁关注微观层面的时间模式,并激励未来的工作来支持学习者在类似背景下的参与。
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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