促进在线学习社区推荐的社会分析框架

Yanyan Li, Haogang Bao, Yafeng Zheng, Zhinan Huang
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引用次数: 3

摘要

由于近年来在线社交网络服务的普及,在线学习社区已成为非正式学习的重要场所。本文提出了一个社会分析框架,旨在提高推荐服务,以满足学习者的不同学习需求。本研究在传统协同过滤方法的基础上,重点考虑社会关系和用户行为,构建特定主题的用户可信度网络。来自社会分析的直接关联和间接关联证据为构建用户信任网络提供了互补信息。对于特定主题的用户可信度网络,还计算了影响力和专业知识两个特征,以细化用户之间的可信度值。此外,我们还进一步研究了学习者在长寿和中心性方面的表现,为选择合适的推荐对象提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Analytics Framework to Boost Recommendation in Online Learning Communities
Online learning communities have become an important place serving informal learning due to the prevalence of online social networking services during the past few years. This paper proposes a social analytics framework aiming to boost recommendation service catering for the different learning demands of learners. Based on the traditional collaborative filtering approach, this study focuses on constructing topic-specific user credibility network by considering social relations and user behaviors. Both direct and indirect connections evidence from social analytics provide complementary information to construct user trust network. Regarding the topic-specific user credibility network, two features including influence and expertise are also computed to refine the credibility value between users. Furthermore, the performances of learners were further investigated in terms of longevity and centrality that could be referred when selecting suitable people for recommendation.
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