DYNAMIC LEARNING STYLE MODELLING USING PROBABILISTIC BAYESIAN NETWORK

Daiva Goštautaitė
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引用次数: 1

Abstract

Personalised learning systems provide a unique, specific learning path for particular student or a group of students. They can adapt according to learner’s requirements and preferences. They apply traditional information technologies, systems and tools in such a manner which provides learning based on student’s strengths, weaknesses, psychological portrait, pace of learning, learner’s needs and pedagogical methods best suited. Learning content personalisation, learning content type, representation of learning content, content navigation pattern are the main aspects to consider when personalising virtual learning environments. As personalisation is done by personal traits of a learner and by other information related to particular learner, user profiles and user models are used for modelling and storing such kind of information. In this paper, first, a systematic review of literature on user modelling is done, focusing on static and dynamic user’s learning style models. Then Bayes approach to learning style modelling is introduced. In first subsection philosophical approach to representation of causality and belief is described – Bayes models are based on such approach. Then rules of probability theory applicable to Bayes models are presented. The following subsection is aimed at description of dynamic learning style modelling using probabilistic Bayes network. Bayes network uses data about learner’s past behaviour in web-based learning environment for prediction on properties to be used for future personalisation. As a lot of factors extracted from learner’s past behaviour in adaptive hypermedia learning systems determine learning style [61], review of literature about patterns of learners’ behaviour together with analysis of practical application of behavioural patterns for students learning style identification was done, trying to systematize stereotypical features (patterns) of learners’ behaviour that can be used to conclude a learning style. A list of key factors which probabilistically are related to the particular learning style has been compiled for quick handy use. Simulation of relationships between random key factors for learning style identification using Bayes probabilistic graphical model is also presented in the paper. Advantages and disadvantages of Bayesian learning style modelling were specified. Finally, conclusions and future trend are presented.
基于概率贝叶斯网络的动态学习风格建模
个性化学习系统为特定的学生或学生群体提供独特的、特定的学习路径。他们可以根据学习者的要求和喜好进行调整。他们运用传统的信息技术、系统和工具,根据学生的长处、短处、心理特征、学习速度、学习者的需要和最适合的教学方法提供学习。学习内容个性化、学习内容类型、学习内容表示、内容导航模式是个性化虚拟学习环境需要考虑的主要方面。由于个性化是通过学习者的个人特征和与特定学习者相关的其他信息来完成的,因此使用用户配置文件和用户模型来建模和存储此类信息。本文首先对用户建模的相关文献进行了系统的综述,重点介绍了静态和动态用户学习风格模型。然后介绍了贝叶斯学习风格建模方法。在第一部分中,描述了因果关系和信念表示的哲学方法-贝叶斯模型是基于这种方法。然后给出了适用于贝叶斯模型的概率论规则。以下小节旨在描述使用概率贝叶斯网络的动态学习风格建模。贝叶斯网络在基于网络的学习环境中使用关于学习者过去行为的数据来预测用于未来个性化的属性。由于在自适应超媒体学习系统中,从学习者过去的行为中提取的许多因素决定了学习风格[61],因此我们回顾了关于学习者行为模式的文献,并分析了行为模式在学生学习风格识别中的实际应用,试图将学习者行为的定型特征(模式)系统化,这些特征(模式)可用于总结学习风格。为了方便快速使用,我们编制了一份可能与特定学习风格相关的关键因素列表。本文还利用贝叶斯概率图模型模拟了学习风格识别中随机关键因素之间的关系。指出了贝叶斯学习风格建模的优缺点。最后,提出了结论和未来发展趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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