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Identifying Students' Mechanistic Explanations in Textual Responses to Science Questions with Association Rule Mining

机译:用关联规则挖掘确定学生​​对科学问题的文本回应的机制解释

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Reasoning about causal mechanisms is central to scientific inquiry. In science education, it is important for teachers and researchers to detect students' mechanistic explanations as evidence of their learning, especially related to causal mechanisms. In this paper, we introduce a semi-automated method that combines association rule mining with human rater's insight to characterize students' mechanistic explanations from their written responses to science questions. We show an example of applying this method to students' written responses to a question about climate change and compare mechanistic reasoning between high-and low-scoring student groups. Such analysis provides important insight into students' current knowledge structure and informs teachers and researchers about future design of instructional interventions.
机译:关于因果机制的推理是科学探究的核心。在科学教育中,教师和研究人员很重要,以检测学生的机制解释作为他们的学习的证据,特别是与因果机制有关。在本文中,我们介绍了一种半自动方法,将合并规则挖掘与人类rater的见解结合起来,以从他们对科学问题的书面答复中表征学生的机制解释。我们展示了将这种方法应用于学生对气候变化问题的书面答复,并比较高低得分的学生团体之间的机制推理。这种分析为学生当前的知识结构提供了重要的洞察力,并告知教师和研究人员关于指导干预措施的未来设计。

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