Recommender systems are popular tools for information retrieval tasks on a large variety of web applications and personalized products. In this work, we propose a Generative Adversarial Network based recommendation framework using a positive-unlabeled sampling strategy. Specifically, we utilize the generator to learn the continuous distribution of user-item tuples and design the discriminator to be a binary classifier that outputs the relevance score between each user and each item. Meanwhile, positive-unlabeled sampling is applied in the learning procedure of the discriminator. Theoretical bounds regarding positive-unlabeled sampling and optimalities of convergence for the discriminators and the generators are provided. We show the effectiveness and efficiency of our framework on three publicly accessible data sets with eight ranking-based evaluation metrics in comparison with thirteen popular baselines.
翻译:在这项工作中,我们提出了一个基于创性反versarial网络的建议框架,采用积极、无标签的抽样战略,具体地说,我们利用生成者学习用户-项目图例的持续分布,并设计歧视者为二进制分类器,使每个用户和每个项目之间得出相关评分;同时,在歧视者的学习程序中采用正面、无标签的取样方法;提供了对歧视者和生成者进行积极、无标签抽样和最佳趋同的理论界限;我们展示了三个可公开查阅的数据集框架的有效性和效率,与13个流行基线相比,有8个基于排名的评价指标。