协同翻译度量学习

Chanyoung Park, Donghyun Kim, Xing Xie, Hwanjo Yu
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引用次数: 43

摘要

近年来,基于矩阵分解的推荐方法因违反三角不等式而受到批评。虽然已经提出了几种基于度量学习的方法来克服这个问题,但现有的方法通常将每个用户投影到度量空间中的单个点上,因此不足以正确建模隐式反馈中用户-项目关系的强度和异质性。在本文中,我们提出了TransCF来发现隐含在用户-项目交互中的潜在用户-项目关系。受知识图嵌入推广的翻译机制的启发,我们利用用户和物品之间的邻域信息构造了针对用户-物品的翻译向量,并根据用户与物品之间的关系将每个用户翻译成物品。就命中率而言,我们提出的方法比七个真实数据的top-N推荐的几种最先进的方法高出17%。我们还对我们提出的方法获得的翻译向量进行了广泛的定性评估,以确定采用基于隐式反馈的推荐的翻译机制的好处。
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Collaborative Translational Metric Learning
Recently, matrix factorization–based recommendation methods have been criticized for the problem raised by the triangle inequality violation. Although several metric learning–based approaches have been proposed to overcome this issue, existing approaches typically project each user to a single point in the metric space, and thus do not suffice for properly modeling the intensity and the heterogeneity of user-item relationships in implicit feedback. In this paper, we propose TransCF to discover such latent user-item relationships embodied in implicit user-item interactions. Inspired by the translation mechanism popularized by knowledge graph embedding, we construct user-item specific translation vectors by employing the neighborhood information of users and items, and translate each user toward items according to the user's relationships with the items. Our proposed method outperforms several state-of-the-art methods for top-N recommendation on seven real-world data by up to 17% in terms of hit ratio. We also conduct extensive qualitative evaluations on the translation vectors learned by our proposed method to ascertain the benefit of adopting the translation mechanism for implicit feedback-based recommendations.
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