Cross-domain recommendation has attracted increasing attention from industry and academia recently. However, most existing methods do not exploit the interest invariance between domains, which would yield sub-optimal solutions. In this paper, we propose a cross-domain recommendation method: Self-supervised Interest Transfer Network (SITN), which can effectively transfer invariant knowledge between domains via prototypical contrastive learning. Specifically, we perform two levels of cross-domain contrastive learning: 1) instance-to-instance contrastive learning, 2) instance-to-cluster contrastive learning. Not only that, we also take into account users' multi-granularity and multi-view interests. With this paradigm, SITN can explicitly learn the invariant knowledge of interest clusters between domains and accurately capture users' intents and preferences. We conducted extensive experiments on a public dataset and a large-scale industrial dataset collected from one of the world's leading e-commerce corporations. The experimental results indicate that SITN achieves significant improvements over state-of-the-art recommendation methods. Additionally, SITN has been deployed on a micro-video recommendation platform, and the online A/B testing results further demonstrate its practical value. Supplement is available at: https://github.com/fanqieCoffee/SITN-Supplement.
翻译:最近,产业界和学术界日益关注跨部门建议。然而,大多数现有方法并未利用不同领域之间的利害差异,从而产生亚最佳解决方案。在本文件中,我们提议了一个跨领域建议方法:自我监督的利益转移网络(SITN),它可以通过模拟对比学习,有效地在不同领域之间转让不同知识。具体地说,我们开展了两个层次的交叉对比学习:1) 实例到内部对比学习,2) 实例到集群对比学习。不仅如此,我们还考虑到用户的多面性和多面利益。在这个模式下,SITN可以明确学习不同领域之间利益集群的异性知识,并准确地捕捉到用户的意图和偏好。我们在公共数据集和从世界主要电子商务公司收集的大规模工业数据集上进行了广泛的实验。实验结果表明,SITN在州-艺术建议方法上取得了显著的改进。此外,SITN在微视像建议平台上还安装了“多面”和“多面”软件,还展示了“A/BA”测试结果。</s>