Learning to capture feature relations effectively and efficiently is essential in click-through rate (CTR) prediction of modern recommendation systems. Most existing CTR prediction methods model such relations either through tedious manually-designed low-order interactions or through inflexible and inefficient high-order interactions, which both require extra DNN modules for implicit interaction modeling. In this paper, we proposed a novel plug-in operation, Dynamic Parameterized Operation (DPO), to learn both explicit and implicit interaction instance-wisely. We showed that the introduction of DPO into DNN modules and Attention modules can respectively benefit two main tasks in CTR prediction, enhancing the adaptiveness of feature-based modeling and improving user behavior modeling with the instance-wise locality. Our Dynamic Parameterized Networks significantly outperforms state-of-the-art methods in the offline experiments on the public dataset and real-world production dataset, together with an online A/B test. Furthermore, the proposed Dynamic Parameterized Networks has been deployed in the ranking system of one of the world's largest e-commerce companies, serving the main traffic of hundreds of millions of active users.
翻译:在现代建议系统的点击率预测中,必须学会有效和高效地捕捉地物关系。大多数现有的CTR预测方法通过冗长的手工设计的低级互动或通过不灵活和低效率的高级互动来模拟这种关系,两者都需要额外的DNN模块来进行隐含的互动模型。在本文中,我们提议了一个新的插座操作,即动态参数操作(DPO),以从实例的角度学习直线和隐含的互动。我们表明,将DPO引入DPO模块和 " 注意 " 模块可以分别有利于CTR预测中的两个主要任务,即加强基于地物的模型的适应性,改进用户行为模式与实例地点的模型。我们的动态参数化网络在公共数据集和真实世界生产数据集的离线实验中大大超出最新的方法,同时进行在线的A/B测试。此外,拟议的动态参数化网络已经部署到世界最大电子商务公司之一的排名系统中,为数亿活跃用户提供主要交通服务。