Exploiting user and item embedding in latent factor models for recommendations

Zhaoqiang Li, Jiajin Huang, N. Zhong
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引用次数: 3

Abstract

Matrix factorization (MF) models and their extensions are widely used in modern recommender systems. MF models decompose the observed user-item interaction matrix into user and item latent factors. In this paper, we propose mixture models which combine the technology of MF and the embedding. We show that some of these models significantly improve the performance over the state-of-the-art models on two real-world datasets, and explain how the mixture models improve the quality of recommendations.
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利用潜在因素模型中的用户和项目嵌入进行推荐
矩阵分解模型及其扩展在现代推荐系统中得到了广泛的应用。MF模型将观察到的用户-物品交互矩阵分解为用户和物品潜在因素。在本文中,我们提出了一种结合了MF技术和嵌入技术的混合模型。我们展示了其中一些模型在两个真实数据集上显著提高了最先进模型的性能,并解释了混合模型如何提高推荐的质量。
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