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Comparing Knowledge Tracing and Performance Factor Analysis by Using Multiple Model Fitting Procedures

机译:使用多种模型拟合程序比较知识跟踪和性能因素分析

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Student modeling is very important for ITS due to its ability to make inferences about latent student attributes. Although knowledge tracing (KT) is a well-established technique, the approach used to fit the model is still a major issue as different model-fitting approaches lead to different parameter estimates. Performance Factor Analysis, a competing approach, predicts student performance based on the item difficulty and student historical performances. In this study, we compared these two models in terms of their predictive accuracy and parameter plausibility. For the knowledge tracing model, we also examined different model fitting algorithms: Expectation Maximization (EM) and Brute Force (BF). Our results showed that KT+EM is better than KT+BF and comparable with PFA in predictive accuracy. We also examined whether the models' estimated parameter values were plausible. We found that by tweaking PFA, we were able to obtain more plausible parameters than with KT.
机译:学生建模对于ITS非常重要,因为它具有推断潜在学生属性的能力。尽管知识跟踪(KT)是一项完善的技术,但是用于模型拟合的方法仍然是一个主要问题,因为不同的模型拟合方法会导致不同的参数估计。绩效因素分析是一种竞争性方法,可以根据项目难度和学生的历史表现来预测学生的表现。在这项研究中,我们比较了这两种模型的预测准确性和参数合理性。对于知识跟踪模型,我们还研究了不同的模型拟合算法:期望最大化(EM)和蛮力(BF)。我们的结果表明,KT + EM的预测准确性优于KT + BF,可与PFA媲美。我们还检查了模型的估计参数值是否合理。我们发现,通过调整PFA,我们可以获得比KT更合理的参数。

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