论文标题

跨域和跨系统建议的深层框架

A Deep Framework for Cross-Domain and Cross-System Recommendations

论文作者

Zhu, Feng, Wang, Yan, Chen, Chaochao, Liu, Guanfeng, Orgun, Mehmet, Wu, Jia

论文摘要

跨域建议(CDR)和跨系统建议(CSR)是解决推荐系统中长期存在的数据稀疏问题的两种有希望的解决方案。他们利用来自源域或系统的评级(例如评级)来提高目标域或系统中的建议精度。因此,找到跨域或系统​​的潜在因素的准确映射对于提高建议准确性至关重要。但是,这是一项非常具有挑战性的任务,因为源和目标域或系统的潜在因素之间存在复杂的关系。为此,在本文中,我们基于基于矩阵分解模型(MF)模型和完全连接的深神经网络(DNN),为跨域和跨系统建议(称为DCDCSR)提出了一个深层框架。具体而言,DCDCSR首先采用MF模型来生成用户和项目潜在因素,然后采用DNN来绘制跨域或系统​​的潜在因素。更重要的是,我们考虑了不同域或系统中单个用户和项目的评级稀疏度,并使用它们来指导DNN培训过程以更有效地利用评级数据。在三个现实世界数据集上进行的广泛实验表明,DCDCSR框架在建议准确性方面优于最先进的CDR和CSR方法。

Cross-Domain Recommendation (CDR) and Cross-System Recommendations (CSR) are two of the promising solutions to address the long-standing data sparsity problem in recommender systems. They leverage the relatively richer information, e.g., ratings, from the source domain or system to improve the recommendation accuracy in the target domain or system. Therefore, finding an accurate mapping of the latent factors across domains or systems is crucial to enhancing recommendation accuracy. However, this is a very challenging task because of the complex relationships between the latent factors of the source and target domains or systems. To this end, in this paper, we propose a Deep framework for both Cross-Domain and Cross-System Recommendations, called DCDCSR, based on Matrix Factorization (MF) models and a fully connected Deep Neural Network (DNN). Specifically, DCDCSR first employs the MF models to generate user and item latent factors and then employs the DNN to map the latent factors across domains or systems. More importantly, we take into account the rating sparsity degrees of individual users and items in different domains or systems and use them to guide the DNN training process for utilizing the rating data more effectively. Extensive experiments conducted on three real-world datasets demonstrate that DCDCSR framework outperforms the state-of-the-art CDR and CSR approaches in terms of recommendation accuracy.

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