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Network-Constrained Tensor Factorization for Personal Recommendation in an Enterprise Network

机译:企业网络中个人推荐的网络受限张解因素分解

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While standard product recommendation systems have proven to be useful for e-commerce, they mainly rely on some prior information about users and products, such as ratings and intrinsic properties of products as well as profile attributes of users. In e-commerce settings, however, a more complete understanding of the demands of customers and the enterprise network constructed by suppliers and manufacturers can be utilized to improve the quality of product recommendations. Moreover, user ratings may be very sparse in some domains. Standard approaches suffer from such data sparsity and neglect to account for important additional dependencies that can be taken into consideration. This motivates us to design a new recommendation model, which incorporates information of network into rating prediction. In this paper, we propose a network-constrained tensor factorization approach, which imposes network constraints as regularization terms on tensor non-negative factorization to improve the accuracy of prediction. To solve the network-constrained regularization problem in our model, we use the Alternating Direction Method of Multipliers (ADMM) method. Experiment results on real-world dataset demonstrate that our approach outperforms other state-of-the-art baselines.
机译:虽然标准产品推荐系统已被证明是对电子商务有用的,但它们主要依赖于有关用户和产品的一些事先信息,例如产品的评级和内在属性以及用户的个人资料属性。但是,在电子商务环境中,可以利用更完全了解客户的需求和供应商和制造商构建的企业网络,以提高产品建议的质量。此外,在一些域中的用户额定值可能非常稀疏。标准方法遭受此类数据稀疏性,忽略了解可以考虑的重要附加依赖项。这激励我们设计一个新的推荐模型,它将网络信息集成到评级预测中。在本文中,我们提出了一种网络受限的张量分解方法,其将网络限制施加为张量非负面分解的正则化术语,以提高预测的准确性。为了解决我们模型中的网络受限的正则化问题,我们使用乘法器(ADMM)方法的交替方向方法。实验结果在现实世界数据集上表明,我们的方法优于其他最先进的基线。

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