社会标签系统中基于信任的用户群推荐

Hao Wu, Yu Hua, Bo Li, Yijian Pei
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引用次数: 4

摘要

群体推荐系统使用各种策略将用户的偏好聚合成一个共同的社会福利函数,使所有成员的满意度最大化。群体推荐对网站非常有用,尤其是对社会标签系统。在本文中,我们初步试验了社会标签系统中用于群体推荐的各种排名聚合策略。特别地,我们考虑了基于信任社会关系的社区发现发现的基于信任的用户群体。此外,我们提出混合相似度来估计用户和资源之间的相关性。在Delicious和Lastfm数据集上的实验表明,在社交标签系统中,CombMAX、CombSUM和CombANZ更适合将个人偏好聚合为群体偏好。基于该模型的群体推荐效果优于个体推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards recommendation to trust-based user groups in social tagging systems
Group recommender systems use various strategies to aggregate users' preferences into a common social welfare function which would maximize the satisfaction of all members. Group recommendation is essentially useful for websites, especially for social tagging systems. In this paper, we initially experiment with various rank aggregation strategies for group recommendation in social tagging systems. Specially, we consider trust-based user groups detected by community discovery based on trustable social relations. Also, we present hybrid similarity to estimate the relevance between users and resources. According to experiments on Delicious and Lastfm datasets, CombMAX, CombSUM and CombANZ are more suitable for aggregating individual preference into a group preference in social tagging systems. And group recommendation can achieve better effect than individual recommendation based on our proposed model.
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