基于模糊项目反应理论的个性化课件推荐系统

Chih-Ming Chen, Ling-Jiun Duh, Chao-Yu Liu
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引用次数: 49

摘要

随着计算机和互联网技术的飞速发展,电子学习已成为当前计算机辅助教学领域的一大趋势。近年来,许多研究者致力于开发具有个性化学习机制的电子学习系统,以辅助在线学习。然而,它们大多侧重于利用学习者的行为、兴趣或习惯来提供个性化的电子学习服务。这些系统通常忽略了学习者的能力和课件的难度是否匹配。一般来说,推荐一个不合适的课件可能会导致学习者在学习过程中的认知负担或迷失方向。为了提高学习效率和效果,我们提出了一种基于模糊项目反应理论(first)的个性化课件推荐系统(PCRS),该系统可以通过学习者对学习的课件给出理解百分比的模糊反应,向学习者推荐适当难度的课件。实验结果表明,将所提出的模糊项目反应理论应用于基于网络的学习,可以实现个性化学习,帮助学习者更有效地学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A personalized courseware recommendation system based on fuzzy item response theory
With the rapid growth of computer and Internet technologies, e-learning has become a major trend in the computer assisted teaching and learning field currently. In past years, many researchers made efforts in developing e-learning systems with personalized learning mechanism to assist on-line learning. However, most of them focused on using learner's behaviors, interests, or habits to provide personalized e-learning services. These systems usually neglected to concern if learner's ability and the difficulty of courseware are matched each other. Generally, recommending an inappropriate courseware might result in learner's cognitive overhead or disorientation during a learning process. To promote learning efficiency and effectiveness, we present a personalized courseware recommendation system (PCRS) based on the proposed fuzzy item response theory (FIRT), which can recommend courseware with appropriate difficult level to learner through learner gives a fuzzy response of understanding percentage for the learned courseware. Experiment results show that applying the proposed fuzzy item response theory to Web-based learning can achieve personalized learning and help learners to learn more effectively and efficiently.
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