时间动态推荐系统的概率时间双线性模型

Cheng Luo, Xiongcai Cai, N. Chowdhury
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引用次数: 4

摘要

随着新时尚或新产品的出现,用户对产品的偏好会随着时间的推移而不断变化,因为产品的感知和受欢迎程度也会发生变化。因此,对用户偏好和产品吸引力的趋势进行建模的能力对推荐系统的设计至关重要。然而,RSs中的传统方法无法对这种趋势进行相应的建模,从而导致在许多实际部署中的推荐性能不令人满意。在本文中,我们开发了一种新的概率时间双线性RSs模型,利用用户对物品的反馈得出的用户偏好和物品吸引力的时间属性和动态信息,同时跟踪代表用户偏好和物品吸引力的潜在因素。本文还针对该模型开发了一种结合时序蒙特卡罗方法和EM算法的学习和推理算法,以解决top-k推荐问题。该模型在三个基准数据集上进行了评估。实验结果表明,我们提出的模型显著优于各种现有的top-k推荐方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Probabilistic temporal bilinear model for temporal dynamic recommender systems
User preferences for products are constantly drifting over time as product perception and popularity are changing when new fashions or products emerge. Therefore, the ability to model the tendency of both user preferences and product attractiveness is vital to the design of recommender systems (RSs). However, conventional methods in RSs are incapable of modeling such a tendency accordingly, leading to unsatisfactory recommendation performance in many real-world deployments. In this paper, we develop a novel probabilistic temporal bilinear model for RSs, exploiting both temporal properties and dynamic information in user preferences and item attractiveness derived from the users' feedback over items, to simultaneously track latent factors that represent user preferences and item attractiveness. A learning and inference algorithm combining a sequential Monte Carlo method and the EM algorithm for this model is also developed to tackle the top-k recommendation problem over time. The proposed model is evaluated on three benchmark datasets. The experimental results demonstrate that our proposed model significantly outperforms a variety of existing methods for top-k recommendation.
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