Curriculum Modelling and Learner Simulation as a Tool in Curriculum (Re)Design

John E. McEneaney, Paul Morsink
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引用次数: 4

Abstract

Learning analytics (LA) provides tools to analyze historical data with the goal of better understanding how curricular structures and features have impacted student learning. Forward-looking curriculum design, however, frequently involves a degree of uncertainty. Historical data may be unavailable, a contemplated modification to curriculum may be unprecedented, or we may lack data regarding particular learner populations. To address this need, we propose using curriculum modelling and learner simulation (CMLS), which relies on well-established modelling theory and software to represent an existing or contemplated curriculum. The resulting model incorporates relevant research-based principles of learning to individually simulate learners and estimate their learning achievement as they move through the modelled curriculum. Results reflect both features of the curriculum (e.g., time allocated to different learning outcomes), learner profiles, and the natural variability of learners. We describe simulations with two versions of a college-level curriculum, explaining how results from simulations informed curriculum redesign work. We conclude with commentary on generalizing these methods, noting both theoretical and practical benefits of CMLS for curriculum (re)design.
课程(再)设计中的课程建模与学习者模拟
学习分析(LA)提供了分析历史数据的工具,目的是更好地理解课程结构和特征如何影响学生的学习。然而,前瞻性的课程设计往往涉及一定程度的不确定性。历史数据可能是不可用的,对课程的预期修改可能是前所未有的,或者我们可能缺乏关于特定学习者群体的数据。为了满足这一需求,我们建议使用课程建模和学习者模拟(CMLS),它依赖于完善的建模理论和软件来表示现有或预期的课程。由此产生的模型结合了相关的基于研究的学习原则,以单独模拟学习者,并在他们通过建模课程的过程中评估他们的学习成果。结果反映了课程的特点(例如,分配给不同学习成果的时间)、学习者概况和学习者的自然变异性。我们用两个版本的大学水平课程来描述模拟,解释模拟的结果如何为课程重新设计提供信息。我们总结了对这些方法的概括,指出了CMLS对课程(重新)设计的理论和实践好处。
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