Jiawei Chen, C. Wang, M. Ester, Qihao Shi, Yan Feng, Chun Chen
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引用次数: 26
摘要
随着在线社交网络的爆炸式增长,人们提出了许多社交推荐方法,并证明社交信息具有提高推荐性能的潜力。然而,现有的社会推荐方法总是假设数据随机缺失(MAR),但这种情况很少发生。事实上,通过分析两个现实世界的社交推荐数据集,我们观察到以下有趣的现象:(1)用户倾向于消费和评价他们喜欢的商品和他们的朋友已经消费过的商品。(2)当该商品被更多的朋友消费时,观察到的评分平均值会变小,而不是像现有模型假设的那样变大。为了对这些现象进行建模,我们将缺失非随机假设(missing not at random, MNAR)融入到社会推荐中,提出了一种新的社会推荐方法SPMF-MNAR,该方法基于用户偏好和社会影响对评分数据的观察过程进行建模。在大型真实数据集上进行的大量实验验证了SPMF-MNAR比现有的社会推荐方法和基于MNAR假设的非社会推荐方法取得了更好的性能。
Social Recommendation with Missing Not at Random Data
With the explosive growth of online social networks, many social recommendation methods have been proposed and demonstrated that social information has potential to improve the recommendation performance. However, existing social recommendation methods always assume that the data is missing at random (MAR) but this is rarely the case. In fact, by analysing two real-world social recommendation datasets, we observed the following interesting phenomena: (1) users tend to consume and rate the items that they like and the items that have been consumed by their friends. (2) When the items have been consumed by more friends, the average values of the observed ratings will become smaller, not larger as assumed by the existing models. To model these phenomena, we integrate the missing not at random (MNAR) assumption in social recommendation and propose a new social recommendation method SPMF-MNAR, which models the observation process of rating data based on user's preference and social influence. Extensive experiments conducted on large real-world datasets validate that SPMF-MNAR achieves better performance than existing social recommendation methods and the non-social methods based on MNAR assumption.