论文标题

基于生成对抗网络的推荐系统:问题驱动的观点

Recommender Systems Based on Generative Adversarial Networks: A Problem-Driven Perspective

论文作者

Gao, Min, Zhang, Junwei, Yu, Junliang, Li, Jundong, Wen, Junhao, Xiong, Qingyu

论文摘要

现在,推荐系统(RSS)在人们的在线生活中起着非常重要的作用,因为他们是用户的个性化过滤器,可以从一系列选项中找到相关项目。由于其有效性,RSS已被广泛用于以消费者为导向的电子商务平台。但是,尽管取得了经验成功,但这些系统仍然遭受两个局限性:数据噪声和数据稀疏性。近年来,由于其强大的学习复杂的真实数据分布的能力,生成的对抗网络(GAN)在许多领域都引起了人们对许多领域的兴趣。许多研究也证明了它们通过应对这些系统展示的挑战来增强RSS的能力。通常,已经进行了两项研究,它们的共同思想可以总结如下:(1)对于数据噪声问题,对抗性扰动和基于对抗性抽样的培训通常是解决方案; (2)对于数据稀疏问题,数据扩展(通过在Minimax框架下捕获真实数据的分布来实现)是主要的应对策略。为了全面了解这些研究工作,我们回顾了相应的研究和模型,并从问题驱动的角度组织它们。更具体地说,我们提出了这些模型的分类法,以及它们的详细描述和优势。最后,我们详细介绍了基于GAN的RSS中的几个开放问题和当前趋势。

Recommender systems (RSs) now play a very important role in the online lives of people as they serve as personalized filters for users to find relevant items from an array of options. Owing to their effectiveness, RSs have been widely employed in consumer-oriented e-commerce platforms. However, despite their empirical successes, these systems still suffer from two limitations: data noise and data sparsity. In recent years, generative adversarial networks (GANs) have garnered increased interest in many fields, owing to their strong capacity to learn complex real data distributions; their abilities to enhance RSs by tackling the challenges these systems exhibit have also been demonstrated in numerous studies. In general, two lines of research have been conducted, and their common ideas can be summarized as follows: (1) for the data noise issue, adversarial perturbations and adversarial sampling-based training often serve as a solution; (2) for the data sparsity issue, data augmentation--implemented by capturing the distribution of real data under the minimax framework--is the primary coping strategy. To gain a comprehensive understanding of these research efforts, we review the corresponding studies and models, organizing them from a problem-driven perspective. More specifically, we propose a taxonomy of these models, along with their detailed descriptions and advantages. Finally, we elaborate on several open issues and current trends in GAN-based RSs.

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