In recommender systems and advertising platforms, marketers always want to deliver products, contents, or advertisements to potential audiences over media channels such as display, video, or social. Given a set of audiences or customers (seed users), the audience expansion technique (look-alike modeling) is a promising solution to identify more potential audiences, who are similar to the seed users and likely to finish the business goal of the target campaign. However, look-alike modeling faces two challenges: (1) In practice, a company could run hundreds of marketing campaigns to promote various contents within completely different categories every day, e.g., sports, politics, society. Thus, it is difficult to utilize a common method to expand audiences for all campaigns. (2) The seed set of a certain campaign could only cover limited users. Therefore, a customized approach based on such a seed set is likely to be overfitting. In this paper, to address these challenges, we propose a novel two-stage framework named Meta Hybrid Experts and Critics (MetaHeac) which has been deployed in WeChat Look-alike System. In the offline stage, a general model which can capture the relationships among various tasks is trained from a meta-learning perspective on all existing campaign tasks. In the online stage, for a new campaign, a customized model is learned with the given seed set based on the general model. According to both offline and online experiments, the proposed MetaHeac shows superior effectiveness for both content marketing campaigns in recommender systems and advertising campaigns in advertising platforms. Besides, MetaHeac has been successfully deployed in WeChat for the promotion of both contents and advertisements, leading to great improvement in the quality of marketing. The code has been available at \url{https://github.com/easezyc/MetaHeac}.
翻译:在推荐者系统和广告平台中,营销者总是希望通过展示、视频或社交等媒体渠道向潜在受众提供产品、内容或广告。鉴于有一组受众或客户(种子用户),受众扩展技术(看似建模)是一个大有希望的解决方案,可以确定更多潜在受众,他们与种子用户相似,并有可能完成目标运动的商业目标。然而,看起来相似的建模面临两个挑战:(1) 实际上,公司可以开展数百项营销运动,在体育、政治、社会等完全不同的类别中宣传各种内容。因此,很难使用一种通用方法来扩大所有运动的受众。(2) 某些运动的种子集(看似建模)只能覆盖有限的用户。因此,基于这种种子集的定制方法可能过于适合。为了应对这些挑战,我们提议了一个名为Metambalbality 专家和Critical (Metheac) 的新阶段框架,这个框架已经安装在WeChat Look-lishystey系统中。在离线的舞台上,一个通用模型模型模型模型模型模型模型中,可以将高级的版本用于现有的种子营销运动的升级版本,在现有的版本中,在网上的版本中可以显示各种运动的版本。