Accuracy and effectiveness of an orchestration tool on instructors’ interventions and groups’ collaboration

IF 4.1 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computers and Education Open Pub Date : 2024-07-21 DOI:10.1016/j.caeo.2024.100203
LuEttaMae Lawrence , Emma Mercier , Taylor Tucker Parks , Nigel Bosch , Luc Paquette
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Abstract

This paper presents the development of a novel orchestration tool that predicts collaborative problem-solving (CPS) behaviors of undergraduate engineering groups and investigates the use of that tool by instructors. We explore the impact of receiving real-time, machine-learning, model-based prompts on 1) instructors’ orchestration strategies, which are strategies instructors use to manage and facilitate collaborative activities, and 2) groups’ participation, including how groups are engaged in CPS activities. The orchestration tool is a dashboard that notifies instructors of—and advises them on—monitoring and intervening with groups who may need collaborative support and guidance. We describe the accuracy of the models in predicting CPS behaviors and of instructors in identifying these behaviors in the classroom. We then describe how real-time prompts from models can affect instructors’ orchestration strategies and students’ participation. Our findings show that there is variability in the accuracy of our machine learning models and that instructors are better at identifying predictive behaviors as compared to the models. Instructors in this context engaged in orchestration strategies, like monitoring and probing when using the orchestration tool, and groups of students were largely talking while on-task across classes. We triangulate across data sources to examine the effectiveness of the orchestration tool in the classroom and share pedagogical and technical implications for the field.

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协调工具对教师干预和小组合作的准确性和有效性
本文介绍了一种新型协调工具的开发情况,该工具可预测本科生工程小组的协作解决问题(CPS)行为,并研究了指导教师对该工具的使用情况。我们探讨了接收基于机器学习模型的实时提示对以下两个方面的影响:1)指导教师的协调策略,即指导教师用于管理和促进协作活动的策略;2)小组的参与情况,包括小组如何参与 CPS 活动。协调工具是一个仪表板,可通知指导教师并建议他们对可能需要协作支持和指导的小组进行监控和干预。我们介绍了模型预测 CPS 行为的准确性,以及教师在课堂上识别这些行为的准确性。然后,我们描述了模型的实时提示如何影响教师的协调策略和学生的参与。我们的研究结果表明,机器学习模型的准确性存在差异,与模型相比,教师更善于识别预测行为。在这种情况下,指导教师参与了协调策略,如在使用协调工具时进行监控和探查,而学生群体在跨班完成任务时基本上都在交谈。我们对各种数据源进行了三角测量,以检验协调工具在课堂上的有效性,并分享了该领域的教学和技术影响。
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