Information overload and online collaborative learning: insights from agent-based modeling

Shimin Zhang
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引用次数: 3

Abstract

This paper investigates information overload (IO) in large online courses by developing an Agent-based Model (ABM) of student interaction in a computer-supported collaborative learning (CSCL) environment. Student surveys provided ABM model parameters, and experimental results suggest unique visitor count to be a superior metric than user activity level for IO detection. ABM of synchronous/asynchronous platforms demonstrates how additional channels can be introduced to effectively combat IO. As work in progress, we look forward to validating model recommendations with activity data in online classrooms.
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信息过载和在线协作学习:来自基于代理的建模的见解
本文通过在计算机支持的协同学习(CSCL)环境中开发基于agent的学生交互模型(ABM),研究了大型在线课程中的信息过载(IO)问题。学生调查提供了ABM模型参数,实验结果表明,对于IO检测,唯一访问者计数是比用户活动水平更好的度量。同步/异步平台的ABM演示了如何引入额外的通道来有效地对抗IO。随着工作的进行,我们期待着通过在线课堂的活动数据来验证模型建议。
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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