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LPR: A bio-inspired intelligent learning path recommendation system based on meaningful learning theory

机译:LPR:基于有意义的学习理论的生物启发智能学习路径推荐系统

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The educational community has been interested in personalized learning systems that can adapt itself while providing learning support to different learners to overcome the weakness of 'one size fits all' approaches in technology-enabled learning systems.In this paper, one known problem in adaptive learning systems called curriculum sequencing is addressed.A learning path recommendation (LPR) system is designed and implemented that clusters the learners into groups and selects an appropriate learning path for learners based on their prior knowledge.The clustering component uses Fuzzy C-Mean (FCM) algorithm that can recommend more than one learning path to learners located on the cluster boundaries.Using bioinspired ant colony optimization (ACO) algorithm and meaningful learning theory, the ACO path finder component searches for a suitable learning path for the learners while incorporating their continuous improvements.The effectiveness of the LPR system is evaluated by developing and offering a database course to actual learners.The results of the experiment showed that the group using the LPR system had a significantly higher performance and knowledge improvement in the course than the control group.This indicated that the LPR system has a moderate to large impact on the learners' performance and knowledge improvement.
机译:教育社区一直对个性化学习系统有兴趣适应本身的同时为不同学习者提供学习支持,以克服“一种尺寸适合所有”在技术的学习系统方面的弱点。在本文中,在自适应学习中的一个已知问题讨论了称为课程测序的系统。学习路径推荐(LPR)系统被设计和实施,将学习者集群组成,并根据其先前的知识为学习者选择适当的学习路径。聚类组件使用模糊C-CALL(FCM)算法可以推荐位于集群边界的学习者的一个以上的学习路径。使用BioInspired蚁群优化(ACO)算法和有意义的学习理论,ACO路径查找器组件搜索学习者的合适学习路径,同时结合其持续改进。LPR系统的有效性是通过开发和的评估将数据库课程归结为实际学习者。该实验结果表明,使用LPR系统的组在课程中具有明显更高的性能和知识改善,而不是对照组。这表明LPR系统对较大的影响学习者的表现和知识改进。

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