通过机器学习技术设计自适应学习支持

Robert O. Oboko, E. Maina, Peter Waiganjo, E. Omwenga, R. Wario
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引用次数: 2

摘要

在基于web的学习系统中使用web 2.0技术使学习更加以学习者为中心。在以学习者为中心的环境中,需要根据学习者的个人特征为学习者提供适当的支持,以最大限度地提高学习效果。这就要求基于网络的学习系统具有适应学习者个体特征的自适应界面,以适应学习者需求和能力的多样性,并为互动和实现个性化学习保持适当的环境。本文的目的是讨论机器学习技术如何在基于web的学习系统中提供自适应学习支持。在本研究中,使用了两种机器学习算法:异质值差度量(HVDM)和朴素贝叶斯分类器(NBC)。HVDM用于确定与当前学习者相似的学习者,而NBC用于估计学习者需要为当前概念使用额外材料的可能性。为了演示这个概念,我们使用了面向对象编程(OOP)课程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing adaptive learning support through machine learning techniques
The use of web 2.0 technologies in web based learning systems has made learning more learner-centered. In a learner centered environment, there is need to provide appropriate support to learners based on individual learner characteristics in order to maximize learning. This requires a Web-based learning system to have an adaptive interface to suit individual learner characteristics in order to accommodate diversity of learner needs and abilities and to maintain an appropriate context for interaction and for achieving personalized learning. The purpose of this paper is to discuss how machine learning techniques can provide adaptive learning support in a Web-based learning system. In this research, two machine learning algorithms namely: Heterogeneous Value Difference Metric (HVDM) and Naive Bayes Classifier (NBC) were used. HVDM was used to determine those learners who were similar to the current learner while NBC was used to estimate the likelihood that the learner would need to use additional materials for the current concept. To demonstrate the concept we used a course in object oriented programming (OOP).
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