面向电子学习的社区协同过滤

Jian Hu, Wei Zhang
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引用次数: 6

摘要

电子学习的推荐系统需要考虑具体的需求和要求,并改善学习者的“教育方面”。本文从考虑学习者群体结构和协同过滤的角度,提出了一种新的混合推荐系统。在我们的方法中,多种类型的信息被探索和利用,包括学习者和学习项目以及学习者社会信息。利用这些信息类型,我们应用数据挖掘中的多种技术,包括多关系数据挖掘和图数据挖掘,来显式地发现学习者社区结构,进而用于协同过滤。我们的实验表明,我们的方法提供了比其他方法更准确的推荐。
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Community Collaborative Filtering for E-Learning
Recommender systems for e-learning need to consider the specific demands and requirements and to improve the 'educational aspects' for the learners. In this paper, we present a novel hybrid recommender system from a perspective of considering learner community structures to collaborative filtering. In our approach, multiple types of information are explored and exploited, including learners and learning items and learner social information. Leveraging the types of information, we apply multiple techniques from data mining, including multi-relational data mining and graph data mining, to explicitly discovery learner community structures, which in turn are used in collaborative filtering. Our experiments suggest that our approach provides improved accurate recommendations than other approaches.
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