The exposure sequence is being actively studied for user interest modeling in Click-Through Rate (CTR) prediction. However, the existing methods for exposure sequence modeling bring extensive computational burden and neglect noise problems, resulting in an excessively latency and the limited performance in online recommenders. In this paper, we propose to address the high latency and noise problems via Gating-adapted wavelet multiresolution analysis (Gama), which can effectively denoise the extremely long exposure sequence and adaptively capture the implied multi-dimension user interest with linear computational complexity. This is the first attempt to integrate non-parametric multiresolution analysis technique into deep neural networks to model user exposure sequence. Extensive experiments on large scale benchmark dataset and real production dataset confirm the effectiveness of Gama for exposure sequence modeling, especially in cold-start scenarios. Benefited from its low latency and high effecitveness, Gama has been deployed in our real large-scale industrial recommender, successfully serving over hundreds of millions users.
翻译:正在积极研究接触序列,以便用户在Click-Trough率(CTR)预测中有兴趣的模型化。但是,现有的接触序列模型化方法带来了广泛的计算负担和忽视噪音问题,导致过度的悬浮和在线推荐人的工作表现有限。在本文件中,我们提议通过Gate-dapted wollet多分辨率分析(Gama)解决高悬浮和噪音问题,因为Gate-dapted pollet mollet plone multications (Gama) 分析能够有效地使极长的接触序列消沉,并适应性地捕捉隐含的多层用户兴趣,并具有线性计算复杂性。这是将非参数多分辨率分析技术纳入深神经网络以模拟用户接触序列的首次尝试。大规模基准数据集和真实生产数据集的大规模实验证实了伽玛对暴露序列模型化的有效性,特别是在冷启动情景中。Gama从低的悬浮和高电子节能中得益。Gama被部署在我们真正的大型工业推荐人中,成功地为数亿用户服务。