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GBPR:Group Preference Based Bayesian Personalized Ranking for One-Class Collaborative Filtering

机译:GBPR:基于群组偏好的一类协同过滤贝叶斯个性化排名

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One-class collaborative filtering or collaborative ranking with implicit feedback has been steadily receiving more attention,mostly due to the “oneclass” characteristics of data in various services,e.g.,“like” in Facebook and “bought” in Amazon.Previous works for solving this problem include pointwise regression methods based on absolute rating assumptions and pairwise ranking methods with relative score assumptions,where the latter was empirically found performing much better because it models users’ ranking-related preferences more directly.However,the two fundamental assumptions made in the pairwise ranking methods,(1) individual pairwise preference over two items and (2) independence between two users,may not always hold.As a response,we propose a new and improved assumption,group Bayesian personalized ranking (GBPR),via introducing richer interactions among users.In particular,we introduce group preference,to relax the aforementioned individual and independence assumptions.We then design a novel algorithm correspondingly,which can recommend items more accurately as shown by various ranking-oriented evaluation metrics on four real-world datasets in our experiments.
机译:一类协作式过滤或带有隐式反馈的协作式排序一直受到越来越多的关注,这主要是由于各种服务(例如Facebook中的“喜欢”和亚马逊中的“购买”)中数据的“一类”特征所致。这个问题包括基于绝对评分假设的逐点回归方法和具有相对评分假设的成对排名方法,其中根据经验发现后者的表现要好得多,因为它可以更直接地模拟用户与排名相关的偏好。成对排名方法,(1)对两个项目的个人成对偏好,以及(2)两个用户之间的独立性,可能并不总是成立。为此,我们提出了一个新的改进假设,即通过引入更丰富的贝叶斯个性化排名(GBPR)用户之间的交互。特别是,我们引入了组偏好,以放松上述个人和独立性假设。设计相应的新颖算法,可以在我们的实验中对四个真实数据集的各种面向排名的评估指标进行更准确地推荐项目。

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