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Leveraging Explicit Products Relationships for Improved Collaborative Filtering Recommendation Algorithm

机译:利用明确的产品关系,以改进的协作过滤推荐算法

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摘要

Collaborative filtering (CF) is widely applied in recom-mender systems. This study aims to incorporate product relationships into traditional CF based recommendation algorithms to address data sparsity and cold start problems. We propose a novel matrix factorization model, where each user has a category-specific user latent factor vector to more accurately describe the user latent factors. In the meanwhile, the explicit product relationships have been leveraged as the regular term to constrain the learning of product latent feature vector. Lastly, the empirical results demonstrate the superiority of our model against other counterparts on recommendation accuracy. Besides, our model has a good theoretical and practical significance.
机译:协同过滤(CF)广泛应用于RECOM-MENDER系统。本研究旨在将产品关系纳入传统的CF基于CF推荐算法,以解决数据稀疏性和冷启动问题。我们提出了一种新的矩阵分解模型,其中每个用户具有类别特定的用户潜在因子矢量,以更准确地描述用户潜在因子。同时,显性产品关系已被利用为定期术语,以限制产品潜在特征向量的学习。最后,经验结果表明了我们模型对其他对应的建议准确性的优势。此外,我们的模型具有良好的理论和实践意义。

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