Real-word search and recommender systems usually adopt a multi-stage ranking architecture, including matching, pre-ranking, ranking, and re-ranking. Previous works mainly focus on the ranking stage while very few focus on the pre-ranking stage. In this paper, we focus on the information transfer from ranking to pre-ranking stage. We propose a new Contrastive Information Transfer (CIT) framework to transfer useful information from ranking model to pre-ranking model. We train the pre-ranking model to distinguish the positive pair of representation from a set of positive and negative pairs with a contrastive objective. As a consequence, the pre-ranking model can make full use of rich information in ranking model's representations. The CIT framework also has the advantage of alleviating selection bias and improving the performance of recall metrics, which is crucial for pre-ranking models. We conduct extensive experiments including offline datasets and online A/B testing. Experimental results show that CIT achieves superior results than competitive models. In addition, a strict online A/B testing at one of the world's largest E-commercial platforms shows that the proposed model achieves 0.63\% improvements on CTR and 1.64\% improvements on VBR. The proposed model now has been deployed online and serves the main traffic of this system, contributing a remarkable business growth.
翻译:实际字搜索和推荐系统通常采用多阶段排名结构,包括匹配、预排、排名和重新排名。先前的工作主要侧重于排名阶段,而很少有人侧重于排名前阶段。在本文件中,我们侧重于信息从排名阶段向排名前阶段的传递。我们提出了一个新的差异性信息传输框架(CIT),将有用的信息从排名模式向排名前模式转移。我们培训了排名前模式,将积极的一对代表制与一组正对正对对对负代表制区别开来,并有一个对比性的目标。因此,排名前模式可以充分利用排名模式中的丰富信息。CIT框架还具有减少选择偏差和改进召回指标绩效的优势,这对排名前模式至关重要。我们进行了广泛的实验,包括离线数据集和在线A/B测试。实验结果显示,CIT取得了优于竞争模式的优于优优于优优优优优优的一对对,此外,在世界上最大的电子商业平台中进行严格的在线A/B测试,从而显示拟议的模型在排名模型中充分利用了丰富的信息。CTR和1.64号在线改进了本次在线交通系统。