The study of user interest models has received a great deal of attention in click through rate (CTR) prediction recently. These models aim at capturing user interest from different perspectives, including user interest evolution, session interest, multiple interests, etc. In this paper, we focus on a new type of user interest, i.e., user retargeting interest. User retargeting interest is defined as user's click interest on target items the same as or similar to historical click items. We propose a novel soft retargeting network (SRN) to model this specific interest. Specifically, we first calculate the similarity between target item and each historical item with the help of graph embedding. Then we learn to aggregate the similarity weights to measure the extent of user's click interest on target item. Furthermore, we model the evolution of user retargeting interest. Experimental results on public datasets and industrial dataset demonstrate that our model achieves significant improvements over state-of-the-art models.
翻译:用户兴趣模型的研究最近通过速率(CTR)预测的点击得到了极大关注。 这些模型旨在从不同的角度,包括用户兴趣演变、届会兴趣、多重兴趣等,捕捉用户的兴趣。 在本文中,我们侧重于一种新的用户兴趣类型,即用户重新定位兴趣。用户重新定位兴趣的定义是用户对目标项目的点击兴趣与历史点击项目相同或类似。我们建议建立一个新型软性重新定位网络(SRN)来模拟这一特定兴趣。具体地说,我们首先在图形嵌入的帮助下计算目标项目和每个历史项目之间的相似性。然后我们学习汇总相似性加权,以衡量用户对目标项目的点击兴趣的程度。此外,我们模拟用户重新定位兴趣的演变。公共数据集和工业数据集的实验结果显示,我们的模型在最新模型上取得了显著的改进。