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A Data-Driven Technique for Misconception Elicitation

机译:一种误解性启发的数据驱动技术

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摘要

When a quantitative student model is constructed, one of the first tasks to perform is to identify the domain concepts assessed. In general, this task is easily done by the domain experts. In addition, the model may include some misconceptions which are also identified by these experts. Identifying these misconceptions is a difficult task, however, and one which requires considerable previous experience with the students. In fact, sometimes it is difficult to relate these misconceptions to the elements in the knowledge diagnostic system which feeds the student model. In this paper we present a data-driven technique which aims to help elicit the domain misconceptions. It also aims to relate these misconceptions with the assessment activities (e.g. exercises, problems or test questions), which assess the subject in question.
机译:构建定量学生模型时,要执行的首要任务之一是识别评估的领域概念。通常,领域专家可以轻松完成此任务。此外,该模型可能包含一些误解,这些误解也被这些专家识别出。然而,识别这些误解是一项艰巨的任务,并且需要与学生们有相当丰富的经验。实际上,有时很难将这些误解与提供给学生模型的知识诊断系统中的元素相关联。在本文中,我们提出了一种数据驱动的技术,旨在帮助引起领域的误解。它还旨在将这些误解与评估活动(例如练习,问题或测试问题)联系起来,评估活动对所讨论的主题进行评估。

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