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Learning Bayesian Knowledge Tracing Parameters with a Knowledge Heuristic and Empirical Probabilities

机译:学习贝叶斯知识跟踪参数,具有知识启发式和经验概率

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Student modeling is an important component of ITS research because it can help guide the behavior of a running tutor and help researchers understand how students learn. Due to its predictive accuracy, interpretability and ability to infer student knowledge, Corbett & Anderson's Bayesian Knowledge Tracing is one of the most popular student models. However, researchers have discovered problems with some of the most popular methods of fitting it. These problems include: multiple sets of highly dissimilar parameters predicting the data equally well (identifiability), local minima, degenerate parameters, and computational cost during fitting. Some researchers have proposed new fitting procedures to combat these problems, but are more complex and not completely successful at eliminating the problems they set out to prevent. We instead fit parameters by estimating the mostly likely point that each student learned the skill, developing a new method that avoids the above problems while achieving similar predictive accuracy.
机译:学生建模是其研究的重要组成部分,因为它可以帮助指导运行导师的行为,并帮助研究人员了解学生的学习方式。由于其预测的准确性,可意识性和推断学生知识的能力,Corbett&Anderson的贝叶斯知识追踪是最受欢迎的学生模型之一。然而,研究人员发现了一些拟合它的最流行方法的问题。这些问题包括:多组高度不同的参数,预测数据同样良好(可识别性),局部最小值,退化参数和拟合期间的计算成本。一些研究人员提出了打击这些问题的新拟合程序​​,但更复杂,并且在消除他们所采用的问题时更复杂,并且没有完全成功。我们通过估计每个学生学识到技能的主要可能的点来适应参数,开发一种避免上述问题的新方法,同时实现了类似的预测准确性。

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