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A Hybrid Trust-Based Recommender System for Online Communities of Practice

机译:在线实践社区的基于信任的混合推荐系统

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摘要

The needs for life-long learning and the rapid development of information technologies promote the development of various types of online Community of Practices (CoPs). In online CoPs, bounded rationality and metacognition are two major issues, especially when learners face information overload and there is no knowledge authority within the learning environment. This study proposes a hybrid, trust-based recommender system to mitigate above learning issues in online CoPs. A case study was conducted using Stack Overflow data to test the recommender system. Important findings include: (1) comparing with other social community platforms, learners in online CoPs have stronger social relations and tend to interact with a smaller group of people only; (2) the hybrid algorithm can provide more accurate recommendations than celebrity-based and content-based algorithm and; (3) the proposed recommender system can facilitate the formation of personalized learning communities.
机译:终身学习的需求和信息技术的迅速发展促进了各种在线实践社区(CoP)的发展。在在线CoP中,有限理性和元认知是两个主要问题,尤其是当学习者面临信息超载且学习环境中没有知识权威时。这项研究提出了一种基于信任的混合推荐系统,以减轻在线CoP中的上述学习问题。使用Stack Overflow数据进行了案例研究,以测试推荐系统。重要的发现包括:(1)与其他社交社区平台相比,在线CoP中的学习者具有更强的社会关系,并且往往只与一小部分人互动。 (2)混合算法比基于名人和基于内容的算法可以提供更准确的推荐;以及(3)建议的推荐系统可以促进个性化学习社区的形成。

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