首页> 外文会议>International Conference on User Modeling(UM 2007); 20070625-29; Corfu(GR) >Identifiability: A Fundamental Problem of Student Modeling
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Identifiability: A Fundamental Problem of Student Modeling

机译:可识别性:学生建模的基本问题

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In this paper we show how model identifiability is an issue for student modeling: observed student performance corresponds to an infinite family of possible model parameter estimates, all of which make identical predictions about student performance. However, these parameter estimates make different claims, some of which are clearly incorrect, about the student's unobservable internal knowledge. We propose methods for evaluating these models to find ones that are more plausible. Specifically, we present an approach using Dirichlet priors to bias model search that results in a statistically reliable improvement in predictive accuracy (AUC of 0.620 ± 0.002 vs. 0.614 ± 0.002). Furthermore, the parameters associated with this model provide more plausible estimates of student learning, and better track with known properties of students' background knowledge. The main conclusion is that prior beliefs are necessary to bias the student modeling search, and even large quantities of performance data alone are insufficient to properly estimate the model.
机译:在本文中,我们展示了模型可识别性如何成为学生建模的问题:观察到的学生表现对应于可能的模型参数估计的无限家族,所有这些都对学生表现做出相同的预测。但是,这些参数估计值对学生的不可观察的内部知识有不同的主张,其中有些显然是错误的。我们提出了评估这些模型的方法,以找到更合理的模型。具体而言,我们提出了一种使用Dirichlet先验进行偏倚模型搜索的方法,该方法可在统计学上可靠地提高预测准确性(AUC为0.620±0.002对0.614±0.002)。此外,与此模型关联的参数提供了对学生学习的更合理的估计,并更好地跟踪了学生背景知识的已知属性。主要结论是,先前的信念对于偏向学生建模搜索是必要的,即使仅大量的绩效数据也不足以正确估计模型。

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