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More Accurate Student Modeling through Contextual Estimation of Slip and Guess Probabilities in Bayesian Knowledge Tracing

机译:通过贝叶斯知识追溯中的滑移和猜测概率的上下文估计,可以更准确地进行学生建模

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摘要

Modeling students' knowledge is a fundamental part of intelligent tutoring systems. One of the most popular methods for estimating students' knowledge is Corbett and Anderson's [6] Bayesian Knowledge Tracing model. The model uses four parameters per skill, fit using student performance data, to relate performance to learning. Beck [1] showed that existing methods for determining these parameters are prone to the Identifiability Problem: the same performance data can be fit equally well by different parameters, with different implications on system behavior. Beck offered a solution based on Dirichlet Priors [1], but, we show this solution is vulnerable to a different problem, Model Degeneracy, where parameter values violate the model's conceptual meaning (such as a student being more likely to get a correct answer if he/she does not know a skill than if he/she does). We offer a new method for instantiating Bayesian Knowledge Tracing, using machine learning to make contextual estimations of the probability that a student has guessed or slipped. This method is no more prone to problems with Identifiability than Beck's solution, has less Model Degeneracy than competing approaches, and fits student performance data better than prior methods. Thus, it allows for more accurate and reliable student modeling in ITSs that use knowledge tracing.
机译:对学生的知识进行建模是智能辅导系统的基本组成部分。估计学生知识的最流行方法之一是Corbett和Anderson [6]的贝叶斯知识追踪模型。该模型为每个技能使用四个参数,并使用学生表现数据进行拟合,以将表现与学习相关联。 Beck [1]表明,确定这些参数的现有方法很容易出现可识别性问题:相同的性能数据可以通过不同的参数很好地拟合,从而对系统行为产生不同的影响。 Beck提供了一种基于Dirichlet Priors [1]的解决方案,但是,我们证明了该解决方案容易受到另一个问题的影响,即模型退化,其中参数值违反了模型的概念意义(例如,如果他/她不知道自己是否熟练)。我们提供了一种用于实例化贝叶斯知识追踪的新方法,该方法使用机器学习对学生猜测或滑倒的可能性进行上下文估计。与Beck的解决方案相比,此方法不再容易出现可识别性问题,与竞争方法相比,模型退化少,并且比以前的方法更适合学生成绩数据。因此,它允许使用知识跟踪的ITS中更准确,更可靠的学生建模。

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