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Dual-regularized one-class collaborative filtering with implicit feedback

机译:具有隐式反馈的双正则一类协作过滤

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摘要

Collaborative filtering plays a central role in many recommender systems. While most of the existing collaborative filtering methods are proposed for the explicit, multi-class settings (e.g., 1-5 stars in movie recommendation), many real-world applications actually belong to the one-class setting where user feedback is implicitly expressed (e.g., views in news recommendation and video recommendation). In this article, we propose dual-regularized one-class collaborative filtering models for implicit feedback. In particular, by dividing existing methods into point-wise class and pair-wise class, we first propose a point-wise model by integrating two existing methods and further exploiting the side information from both users and items. Next, we propose to add dual regularization into an existing pair-wise method with a different treatment of the side information. We also propose efficient algorithms to solve the proposed models. Extensive experimental evaluations on three real data sets demonstrate the effectiveness and efficiency of the proposed methods.
机译:协作过滤在许多推荐系统中起着核心作用。尽管大多数现存的协作过滤方法都是针对显式的多类别设置(例如,电影推荐中的1-5星)提出的,但许多实际应用实际上属于其中隐式表示用户反馈的一类设置(例如,新闻推荐和视频推荐中的观看次数)。在本文中,我们为隐式反馈提出了双正则化一类协作过滤模型。特别是,通过将现有方法分为点对类和成对对类,我们首先通过集成两种现有方法并进一步利用来自用户和物品的辅助信息来提出点对模型。接下来,我们建议在对边信息进行不同处理的情况下,将对偶正则化添加到现有的成对方法中。我们还提出了有效的算法来解决提出的模型。对三个真实数据集的广泛实验评估证明了所提出方法的有效性和效率。

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