Mitigating the new user cold-start problem has been critical in the recommendation system for online service providers to influence user experience in decision making which can ultimately affect the intention of users to use a particular service. Previous studies leveraged various side information from users and items; however, it may be impractical due to privacy concerns. In this paper, we present ColdGAN, an end-to-end GAN based model with no use of side information to resolve this problem. The main idea of the proposed model is to train a network that learns the rating distributions of experienced users given their cold-start distributions. We further design a time-based function to restore the preferences of users to cold-start states. With extensive experiments on two real-world datasets, the results show that our proposed method achieves significantly improved performance compared with the state-of-the-art recommenders.
翻译:减轻新的用户冷却启动问题在建议系统中至关重要,因为在线服务提供商可以影响用户在决策方面的经验,最终会影响用户使用特定服务的意图。以前的研究利用了用户和项目提供的各种侧面信息;然而,由于隐私问题,这可能不切实际。在本文中,我们介绍了一个基于冷GAN的终端到终端GAN模型,没有使用侧面信息解决这一问题。拟议模式的主要想法是培训一个网络,以学习经验丰富的用户在冷热启动分发情况下的评级分布。我们进一步设计了一个基于时间的功能,以恢复用户对冷启动状态的偏好。通过对两个真实世界数据集的广泛实验,结果显示,与最新推荐者相比,我们拟议的方法取得了显著的改进。