Estimating click-through rate (CTR) accurately has an essential impact on improving user experience and revenue in sponsored search. For CTR prediction model, it is necessary to make out user real-time search intention. Most of the current work is to mine their intentions based on user real-time behaviors. However, it is difficult to capture the intention when user behaviors are sparse, causing the behavior sparsity problem. Moreover, it is difficult for user to jump out of their specific historical behaviors for possible interest exploration, namely weak generalization problem. We propose a new approach Graph Intention Network (GIN) based on co-occurrence commodity graph to mine user intention. By adopting multi-layered graph diffusion, GIN enriches user behaviors to solve the behavior sparsity problem. By introducing co-occurrence relationship of commodities to explore the potential preferences, the weak generalization problem is also alleviated. To the best of our knowledge, the GIN method is the first to introduce graph learning for user intention mining in CTR prediction and propose end-to-end joint training of graph learning and CTR prediction tasks in sponsored search. At present, GIN has achieved excellent offline results on the real-world data of the e-commerce platform outperforming existing deep learning models, and has been running stable tests online and achieved significant CTR improvements.
翻译:准确估计点击率(CTR)对于提高用户在赞助搜索中的经验和收入有着重要影响。对于CTR预测模型,有必要提出用户实时搜索意图。目前的工作大部分是在用户实时行为的基础上确定他们的意图。然而,当用户行为稀少,造成行为偏激问题时,很难捕捉到意图。此外,用户很难跳出其特定的历史行为,以进行可能的兴趣探索,即笼统化问题。我们建议采用基于共同发现商品图表的新的方法。对于地雷用户来说,基于共同发现商品图的新搜索网络(GIN)有必要提出用户实时搜索意图。通过采用多层图的传播,GIN丰富用户的行为,以解决行为狂躁问题。但是,当用户行为稀少时,很难捕捉到其意图的意图,从而造成行为偏好的问题。此外,根据我们的知识,GIN方法是首先在CTR预测中引入用户意图挖掘的图表学习方法,并建议对用户进行从终端到终端的联合培训,并在赞助的搜索中提出CTR预测任务。通过多层次的图表传播,GIN丰富了用户的行为举足的在线测试,目前,全球信息数据库已经取得了良好的、不断发展的模型。