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Interaction-Based Recommendations for Online Communities

机译:基于交互的在线社区建议

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摘要

A key challenge in online communities is that of keeping a community active and alive. All online communities work hard to keep their members through various initiatives, such as personalisation and recommendation technologies. In online communities aimed at supporting behavioural change, that is, in domains such as diet, lifestyle, or the environment, the main reason for participation is not to connect with real-world friends for sharing and communicating, but to meet and gain support from like-minded people in an online environment. Introducing personalisation and recommendation features in these networks is challenging, as traditional approaches leverage the densely populated friendship relations found in typical social networks, and these are not present in these new community types. We address this challenge by looking beyond the articulated friendships of a community for evidence of relationships. In particular, we look at the interactions of members of an online community with other members and resources. In this article, we present a social behaviour model and apply it to two types of recommendation systems, a people recommender and a content recommender system. We evaluate our systems using the interaction logs of an online diet and lifestyle community in which 5,000 Australians participated in a 12-week programme. Our results show that our social behaviour-based recommendation algorithms outperform baselines, friendship-based, and link-prediction algorithms.
机译:在线社区的主要挑战是保持社区的活跃和活力。所有在线社区都在努力通过各种举措(例如个性化和推荐技术)来保留其成员。在旨在支持行为改变的在线社区中,即在饮食,生活方式或环境等领域,参与的主要原因不是与现实世界的朋友联系以进行共享和交流,而是为了结识并获得他们的支持在线环境中志趣相投的人。在这些网络中引入个性化和推荐功能具有挑战性,因为传统方法利用了典型社交网络中人口稠密的友谊关系,而这些在新的社区类型中不存在。我们通过在社区的明确友谊中寻找关系的证据来应对这一挑战。特别是,我们着眼于在线社区成员与其他成员和资源之间的互动。在本文中,我们提出了一种社会行为模型,并将其应用于两种类型的推荐系统:人推荐器和内容推荐器系统。我们使用一个在线饮食和生活方式社区的互动日志来评估我们的系统,其中有5,000名澳大利亚人参加了为期12周的计划。我们的结果表明,基于社交行为的推荐算法优于基线,基于友谊和链接预测的算法。

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