基于图的长期和短期利率模型的点击率预测

Huinan Sun, Guang-hong Yu, Pengye Zhang, Bo Zhang, Xingxing Wang, Dong Wang
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引用次数: 2

摘要

点击率(CTR)预测的目的是预测用户点击某一商品的概率,这一直是在线推荐和广告系统的关键任务之一。在这种系统中,丰富的用户行为(即长期和短期)已被证明在捕获用户兴趣方面具有很大的价值。业界和学术界都非常关注这一话题,并提出了不同的长期和短期用户行为数据建模方法。但仍有一些未解决的问题。更具体地说,(1)基于规则和截断的方法从长期行为中提取信息容易造成信息丢失;(2)不考虑场景的单一反馈行为从短期行为中提取信息导致信息混乱和噪声。为了填补这一空白,我们提出了一个基于图的长期和短期利率模型,称为GLSM。它包括捕获长期用户行为的多兴趣图结构,建模短期信息的多场景异构序列模型,以及融合长期和短期行为信息的自适应融合机制。在真实数据集的综合实验中,GLSM在离线指标上达到了SOTA分数。同时,GLSM算法已经部署在我们的工业应用中,带来了4.9%的CTR和4.3%的GMV提升,这对业务具有重要意义
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Graph Based Long-Term And Short-Term Interest Model for Click-Through Rate Prediction
Click-through rate (CTR) prediction aims to predict the probability that the user will click an item, which has been one of the key tasks in online recommender and advertising systems. In such systems, rich user behavior (viz. long- and short-term) has been proved to be of great value in capturing user interests. Both industry and academy have paid much attention to this topic and propose different approaches to modeling with long-term and short-term user behavior data. But there are still some unresolved issues. More specially, (1) rule and truncation based methods to extract information from long-term behavior are easy to cause information loss, and (2) single feedback behavior regardless of scenario to extract information from short-term behavior lead to information confusion and noise. To fill this gap, we propose a Graph based Long-term and Short-term interest Model, termed GLSM. It consists of a multi-interest graph structure for capturing long-term user behavior, a multi-scenario heterogeneous sequence model for modeling short-term information, then an adaptive fusion mechanism to fused information from long-term and short-term behaviors. Comprehensive experiments on real-world datasets, GLSM achieved SOTA score on offline metrics. At the same time, the GLSM algorithm has been deployed in our industrial application, bringing 4.9% CTR and 4.3% GMV lift, which is significant to the business
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