Examining Student Regulation of Collaborative, Computational, Problem-Solving Processes in Open-Ended Learning Environments

Mona Emara, Nicole M. Hutchins, Shuchi Grover, Caitlin Snyder, G. Biswas
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引用次数: 11

Abstract

The integration of computational modelling in science classrooms provides a unique opportunity to promote key 21st century skills including computational thinking (CT) and collaboration. The open-ended, problem-solving nature of the task requires groups to grapple with the combination of two domains (science and computing) as they collaboratively construct computational models. While this approach has produced significant learning gains for students in both science and CT in K–12 settings, the collaborative learning processes students use, including learner regulation, are not well understood. In this paper, we present a systematic analysis framework that combines natural language processing (NLP) of collaborative dialogue, log file analyses of students’ model-building actions, and final model scores. This analysis is used to better understand students’ regulation of collaborative problem solving (CPS) processes over a series of computational modelling tasks of varying complexity. The results suggest that the computational modelling challenges afford opportunities for students to a) explore resource-intensive processes, such as trial and error, to more systematic processes, such as debugging model errors by leveraging data tools, and b) learn from each other using socially shared regulation (SSR) and productive collaboration. The use of such SSR processes correlated positively with their model-building scores. Our paper aims to advance our understanding of collaborative, computational modelling in K–12 science to better inform classroom applications.
考察学生在开放式学习环境中对协作、计算、解决问题过程的调节
在科学课堂中整合计算建模提供了一个独特的机会来促进21世纪的关键技能,包括计算思维(CT)和协作。该任务的开放性和解决问题的性质要求小组在协作构建计算模型时努力解决两个领域(科学和计算)的结合。虽然这种方法在K-12的科学和CT课程中为学生带来了显著的学习收益,但学生使用的协作学习过程,包括学习者调节,并没有得到很好的理解。在本文中,我们提出了一个系统的分析框架,该框架结合了协作对话的自然语言处理(NLP)、学生模型构建行为的日志文件分析和最终模型分数。该分析用于更好地理解学生在一系列不同复杂性的计算建模任务中对协作解决问题(CPS)过程的调节。结果表明,计算建模挑战为学生提供了机会:a)探索资源密集型过程,如试错,到更系统化的过程,如利用数据工具调试模型错误;b)使用社会共享监管(SSR)和富有成效的协作相互学习。这些SSR过程的使用与其模型构建得分呈正相关。我们的论文旨在提高我们对K-12科学中协作计算建模的理解,以便更好地为课堂应用提供信息。
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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