基于自适应邻居选择的教师学习对象推荐

Stylianos Sergis, D. Sampson
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引用次数: 5

摘要

在“科技促进学习”范畴,政府推行了“推荐系统”,以协助教师选择学习对象,以配合他们的日常教学工作。特别是,基于内存的协同过滤(CF)方法已经在基于web的学习对象存储库(LOR)的实际实现中展示了有希望的结果。在此基础上,本文的贡献是对现有的基于记忆的CF RS方法的改进,通过根据共同评定的LO和后者与要推荐的LO的属性相似度自适应地选择教师邻居。评估结果显示,与“传统”基准相比,自适应RS方法的预测精度显著提高,表明该方法有能力提高现有基于记忆的CF方法的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Learning Object Recommendations for Teachers Using Adaptive Neighbor Selection
Recommender Systems (RS) have been implemented in the Technology enhanced Learning (TeL) field for facilitating, among others, Learning Object (LO) selection by teachers to support their daily teaching practice. In particular, memory-based collaborative filtering (CF) approaches have demonstrated promising results for real-life implementations of web-based Learning Object Repositories (LOR). Building on this, the contribution of this paper is an enhancement to existing memory-based CF RS methods, by adaptively selecting the teacher neighbors based on their co-rated LOs and the attribute similarity of the latter to the LO to be recommended. The evaluation results show a significant increase in the predictive accuracy of the adaptive RS approaches compared to their "traditional" benchmarks, signifying the proposed approach's capacity to enhance the accuracy of existing memory-based CF approaches.
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