基于先验知识的学习风格的IRT和FSLM自动预测

Samia Rami, S. Bennani, Mohammed Khalidi
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摘要

随着在线学习技术的飞速发展,电子学习环境提供了越来越多的学习资源和平台。电子学习的一个长期存在的问题是,在一门特定课程中,为所有学习者提供相同的学习内容,而不考虑他们的个人学习需求。理想情况下,内容必须调整,以适应个别学习者的学习特点。为此,本研究提出了一个适应性学习框架,可以使课程内容与每个学习者的学习风格保持一致。考虑到分班测试评估先验知识的重要规则,我们提出了一种在线学习会话开始时的自动预测学习方式。为了克服冷启动问题,我们的分班测试旨在:(1)主要评估学生的先决条件;(2)在培训开始时隐含地提供有关他们主要学习方式的广泛知识。为此,我们使用了两种方法:基于项目反应理论(IRT)的安置测试和基于规则的方法。为了根据学习者的学习风格对其进行分类,我们采用Felder-Silverman学习风格模型(FSLM)作为我们提出的系统的分类基础。
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Automatic Prediction of Learning Style Based On Prior Knowledge Using IRT and FSLM
With the rapid progress of online learning technology, e-learning environments offer an increasing number of learning resources and platforms. One standing problem of e-learning is delivering the same learning for all learners within a particular course without taking into consideration their individual learning needs. Ideally, the content must be adjusted to fit the individual learner's learning characteristics. To this end, this study proposes a framework for adaptive learning that can align course content with each learner's learning style. Given that the important rule of placement tests for assessing prior knowledge, we propose an automatic prediction learning style at the beginning of online learning session. To overcome the cold start issue, our placement test aims: (1) to principally evaluate students' pre-requisites and to (2) implicitly provide an extensive knowledge about their predominant learning style at the beginning of training. To do that, we used two methods: a placement test based on item response theory (IRT) and a rule-based method. To classify learners according to their learning style, we adopted The Felder-Silverman learning style model (FSLM) as the basis of classification for our proposed system.
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