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Data-Driven Construction of a Student Model Using Bayesian Networks in an Electrical Domain

机译:在电领域中使用贝叶斯网络的学生模型的数据驱动构造

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The student model is a key component of intelligent tutoring systems since enables them to respond to particular needs of students. In the last years, educational systems have widespread in school and industry and they produce data which can be used to know students and to understand and improve the learning process. The student modeling has been improved thanks to educational data mining, which is concerned with discovering novel and potentially useful information from large volumes of data. To build a student model, we have used the data log of a virtual reality training system that has been used for several years to train electricians. We compared the results of this student model with a student model built by an expert. We rely on Bayesian networks to represent the student models. Here we present the student models and the results of an initial evaluation.
机译:学生模型是智能补习系统的关键组成部分,因为它使他们能够响应学生的特定需求。近年来,教育系统已在学校和行业中广泛使用,它们产生的数据可用于了解学生以及理解和改善学习过程。由于教育数据挖掘,该学生模型得到了改进,该数据挖掘涉及从大量数据中发现新颖且可能有用的信息。为了建立学生模型,我们使用了虚拟现实训练系统的数据日志,该系统已经使用了数年来训练电工。我们将该学生模型的结果与专家建立的学生模型进行了比较。我们依靠贝叶斯网络来表示学生模型。在这里,我们介绍学生模型和初步评估的结果。

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