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The Effect of Model Granularity on Student Performance Prediction Using Bayesian Networks

机译:模型粒度对贝叶斯网络学生绩效预测的影响

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A standing question in the field of Intelligent Tutoring Systems and User Modeling in general is what is the appropriate level of model granularity (how many skills to model) and how is that granularity derived? In this paper we will explore models with varying levels of skill generality (1, 5, 39 and 106 skill models) and measure the accuracy of these models by predicting student performance within our tutoring system called ASSISTment as well as their performance on a state standardized test. We employ the use of Bayes nets to model user knowledge and to use for prediction of student responses. Our results show that the finer the granularity of the skill model, the better we can predict student performance for our online data. However, for the standardized test data we received, it was the 39 skill model that performed the best. We view this as support for fine-grained skill models despite the finest grain model not predicting the state test scores the best.
机译:智能辅导系统和用户建模领域的一个站立问题是适当的模型粒度水平(模型有多少技能)以及如何派生粒度?在本文中,我们将探讨具有不同技能级别水平的模型(1,5,39和106种技能模型),并通过预测在我们的辅助系统内的学生表现称为辅助以及它们在标准化状态下的性能来衡量这些模型的准确性测试。我们使用贝叶斯网的使用来模拟用户知识并用于预测学生的反应。我们的结果表明,技能模型的粒度更好,我们可以更好地预测我们的在线数据的学生表现。但是,对于我们收到的标准化测试数据,它是表现最佳的39种技能模型。我们将此视为对细粒度技能模型的支持,尽管最好的谷物模型未预测状态测试最佳。

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