Uncovering what matters: analyzing transitional relations among contribution types in knowledge-building discourse

Bodong Chen, M. Resendes
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引用次数: 13

Abstract

Temporality matters for analysis of collaborative learning. The present study attempts to uncover temporal patterns that distinguish "productive" threads of knowledge building inquiry. Using a rich knowledge building discourse dataset, in which notes' contribution types and threads' productivity have been coded, a secondary temporal analysis was conducted. In particular, Lag-sequential Analysis was conducted to identify transitional patterns among different contribution types that distinguish productive threads from "improvable" ones. Results indicated that productive inquiry threads involved significantly more transitions among questioning, theorizing, obtaining information, and working with information; in contrast, responding to questions and theories by merely giving opinions was not sufficient to achieve knowledge progress. This study highlights the importance of investigating temporality in collaborative learning and calls for attention to developing and testing temporal analysis methods in learning analytics research.
揭示重要:分析知识建构话语中贡献类型之间的过渡关系
时间性对协作学习的分析很重要。本研究试图揭示区分知识构建探究的“生产性”线索的时间模式。利用丰富的知识构建话语数据集,对笔记的贡献类型和线程的生产率进行了编码,进行了二次时间分析。特别是,进行了滞后序列分析,以确定不同贡献类型之间的过渡模式,从而区分生产性线程和“可改进的”线程。结果表明,生产性探究线索在提问、理论化、获取信息和处理信息之间的转换显著增加;相比之下,对问题和理论的回应仅仅是给出意见是不足以实现知识进步的。本研究强调了研究协作学习中时间性的重要性,并呼吁在学习分析研究中关注开发和测试时间分析方法。
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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