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Vectors of Pairwise Item Preferences

机译:成对项目首选项的向量

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Neural embedding has been widely applied as an effective category of vectorization methods in real-world recommender systems. However, its exploration of users' explicit feedback on items, to create good quality user and item vectors is still limited. Existing neural embedding methods only consider the items that are accessed by the users, but neglect the scenario when a user gives high or low rating to a particular item. In this paper, we propose Pref2 Vec, a method to generate vector representations of pairwise item preferences, users and items, which can be directly utilized for machine learning tasks. Specifically, Pref2 Vec considers users' pairwise item preferences as elementary units. It vectorizes users' pairwise preferences by maximizing the likelihood estimation of the conditional probability of each pairwise item preference given another one. With the pairwise preference matrix and the generated preference vectors, the vectors of users are yielded by minimizing the difference between users' observed preferences and the product of the user and preference vectors. Similarly, the vectorization of items can be achieved with the user-item rating matrix and the users vectors. We conducted extensive experiments on three benchmark datasets to assess the quality of item vectors and the initialization independence of the user and item vectors. The utility of our vectorization results is shown by the recommendation performance achieved using them. Our experimental results show significant improvement over state-of-the-art baselines.
机译:在现实世界的推荐系统中,神经嵌入已被广泛用作向量化方法的有效类别。然而,其对用户对物品的明确反馈,以创建高质量的用户和物品矢量的探索仍然是有限的。现有的神经嵌入方法仅考虑用户访问的项目,而忽略了用户对特定项目给予高或低评级的情况。在本文中,我们提出了Pref2 Vec,这是一种生成成对项偏好,用户和项的矢量表示的方法,可直接用于机器学习任务。具体来说,Pref2 Vec将用户的成对商品偏好视为基本单位。它通过最大化给定另一项的每个成对项目偏好的条件概率的似然估计,来矢量化用户的成对偏好。利用成对的偏好矩阵和生成的偏好向量,通过最小化用户观察到的偏好与用户和偏好向量的乘积之间的差异来产生用户向量。类似地,可以使用用户项目评分矩阵和用户矢量来实现项目的矢量化。我们对三个基准数据集进行了广泛的实验,以评估项目向量的质量以及用户和项目向量的初始化独立性。矢量化结果的实用性通过使用它们所获得的推荐性能得以体现。我们的实验结果表明,与最新的基准相比有了显着的改进。

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