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Transfer Learning for Heterogeneous One-Class Collaborative Filtering

机译:转移学习用于异构一类协作过滤

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Various memory- and model-based collaborative filtering algorithms have been designed for multiclass feedback (such as grade scores) in the past two decades. Recently, one-class feedback (such as positive feedback and implicit examination) has been recognized as a more pervasive and important source of information in many real recommendation systems. Previous work along these lines mainly focus on homogenous one-class positive feedback, such as likes on Facebook or transactions on Amazon, which might not capture a user's true preferences due to the sparsity of such data. To alleviate this sparsity problem, the authors study positive feedback and implicit examinations simultaneously, coined as heterogeneous one-class collaborative filtering (HOCCF). Specifically, they designed a novel transfer learning algorithm for HOCCF, called transfer via joint similarity learning (TJSL), that jointly learns a similarity between a candidate item and a preferred item, and a similarity between a candidate item and an identified likely-to-prefer examined item. Joint similarity learning has the merit of being able to connect two seemingly unrelated items along sparse positive feedback only. Empirical studies on three real-world datasets show that TJSL can recommend items more accurately than other state-of-the-art methods.
机译:在过去的二十年中,已经针对多类反馈(例如成绩分数)设计了各种基于内存和模型的协作过滤算法。最近,在许多实际的推荐系统中,一类反馈(例如肯定反馈和内隐检查)已被认为是更普遍和重要的信息来源。这些方面的先前工作主要集中在同质的一类正面反馈上,例如Facebook上的喜欢或亚马逊上的交易,由于此类数据的稀疏性,它们可能无法捕获用户的真实偏好。为了缓解这种稀疏性问题,作者同时研究了正面反馈和隐式检查,这被称为异构一类协作过滤(HOCCF)。具体来说,他们为HOCCF设计了一种新颖的转移学习算法,称为通过联合相似性学习(TJSL)进行转移,该算法可以联合学习候选项目和首选项目之间的相似性,以及候选项目和已识别出的可能相似对象之间的相似性。喜欢检查的物品。联合相似性学习的优点是只能沿着稀疏的积极反馈将两个看似无关的项目联系起来。对三个现实世界数据集的经验研究表明,TJSL可以比其他最新方法更准确地推荐商品。

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