Industrial recommender systems usually hold data from multiple business scenarios and are expected to provide recommendation services for these scenarios simultaneously. In the retrieval step, the topK high-quality items selected from a large number of corpus usually need to be various for multiple scenarios. Take Alibaba display advertising system for example, not only because the behavior patterns of Taobao users are diverse, but also differentiated scenarios' bid prices assigned by advertisers vary significantly. Traditional methods either train models for each scenario separately, ignoring the cross-domain overlapping of user groups and items, or simply mix all samples and maintain a shared model which makes it difficult to capture significant diversities between scenarios. In this paper, we present Adaptive Domain Interest network that adaptively handles the commonalities and diversities across scenarios, making full use of multi-scenarios data during training. Then the proposed method is able to improve the performance of each business domain by giving various topK candidates for different scenarios during online inference. Specifically, our proposed ADI models the commonalities and diversities for different domains by shared networks and domain-specific networks, respectively. In addition, we apply the domain-specific batch normalization and design the domain interest adaptation layer for feature-level domain adaptation. A self training strategy is also incorporated to capture label-level connections across domains.ADI has been deployed in the display advertising system of Alibaba, and obtains 1.8% improvement on advertising revenue.
翻译:产业推荐人系统通常持有来自多种商业情景的数据,并预计将同时为这些情景提供建议服务。在检索步骤中,从大量剧本中挑选的高K级高品质项目通常需要多种情景的不同。例如,用阿里巴巴展示广告系统,不仅因为道保用户的行为模式多种多样,而且广告商规定的不同情景投标价格也大不相同。传统方法或者是为每种情景分别培训模型,忽视用户群和项目之间的交叉重叠,或者简单地将所有样本混合在一起,并维持一个共同模式,从而难以捕捉不同情景之间的显著差异。在本文中,我们介绍适应性地处理不同情景的共性和多样性的适应性永久利益网络,在培训期间充分利用多种情景数据。然后,拟议方法能够提高每个商业领域的业绩,在在线推理中为不同情景提供不同的高K级候选人。具体域的共享网络和具体域域网的共性和多样性。此外,我们运用了适应性适应性适应性域域域域域域域域定义的标准化和设计域域域域域域级的升级升级战略。在Alial A级上也采用了自我升级化的域域域域域域域域域域税升级的升级和升级的升级升级化战略。