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Comparing the Predictive Capability of Social and Interest Affinity for Recommendations

机译:比较建议的社会和利息亲和力的预测能力

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The advent of online social networks created new prediction opportunities for recommender systems: instead of relying on past rating history through the use of collaborative filtering (CF), they can leverage the social relations among users as a predictor of user tastes similarity. Alas, little effort has been put into understanding when and why (e.g., for which users and what items) the social affinity (i.e., how well connected users are in the social network) is a better predictor of user preferences than the interest affinity among them as algorithmically determined by CF, and how to better evaluate recommendations depending on, for instance, what type of users a recommendation application targets. This overlook is explained in part by the lack of a systematic collection of datasets including both the explicit social network among users and the collaborative annotated items. In this paper, we conduct an extensive empirical analysis on six real-world publicly available datasets, which dissects the impact of user and item attributes, such as the density of social ties or item rating patterns, on the performance of recommendation strategies relying on either the social ties or past rating similarity. Our findings represent practical guidelines that can assist in future deployments and mixing schemes.
机译:在线社交网络的出现为推荐系统创建了新的预测机会:而不是通过使用协作过滤(CF)而不是依赖于过去的评级历史,而是可以利用用户之间的社会关系作为用户的预测因素品味相似性。 ALAS,何时以及为什么(例如,用户和哪些项目)的何时以及为什么(即,连接用户在社交网络中的良好)是用户偏好的更好预测因素,而不是比兴趣亲和力更好它们是由CF进行算法确定的,以及如何更好地评估建议,例如,什么类型的用户推荐应用程序目标。这俯视是部分解释的,部分地通过缺乏系统收集数据集,包括用户之间的显式社交网络和协作注释项目。在本文中,我们对六个真实世界公开的数据集进行了广泛的实证分析,这些数据集解剖了用户和项目属性的影响,例如社会领域或项目评级模式的密度,就依靠建议策略的表现社会关系或过去的评级相似性。我们的调查结果代表了可以帮助未来部署和混合计划的实用指导。

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