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Doing More with Less: Student Modeling and Performance Prediction with Reduced Content Models

机译:事半功倍:减少内容模型的学生建模和性能预测

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摘要

When modeling student knowledge and predicting student performance, adaptive educational systems frequently rely on content models that connect learning content (i.e., problems) with its underlying domain knowledge (i.e., knowledge components, KCs) required to complete it. In some domains, such as programming, the number of KCs associated with advanced learning contents is quite large. It complicates modeling due to increasing noise and decreases efficiency. We argue that the efficiency of modeling and prediction in such domains could be improved without the loss of quality by reducing problems content models to a subset of most important KCs. To prove this hypothesis, we evaluate several KC reduction methods varying reduction size by assessing the prediction performance of Knowledge Tracing and Performance Factor Analysis. The results show that the predictive performance using reduced content models can be significantly better than using original one, with extra benefits of reducing time and space.
机译:当对学生知识建模并预测学生表现时,适应性教育系统经常依赖于将学习内容(即问题)与其完成所需的基础领域知识(即知识成分,KC)联系起来的内容模型。在某些领域,例如编程领域,与高级学习内容相关的KC数量很多。由于噪声增加和效率降低,使建模复杂化。我们认为,通过将问题内容模型简化为最重要的KC的子集,可以提高此类领域中建模和预测的效率,而不会降低质量。为了证明这一假设,我们通过评估知识跟踪和性能因子分析的预测性能,评估了各种KC减少方法,这些方法减少了减小的大小。结果表明,使用减少内容的模型的预测性能可以明显优于使用原始模型的模型,并且具有减少时间和空间的额外好处。

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