APP-installation information is helpful to describe the user's characteristics. The users with similar APPs installed might share several common interests and behave similarly in some scenarios. In this work, we learn a user embedding vector based on each user's APP-installation information. Since the user APP-installation embedding is learnable without dependency on the historical intra-APP behavioral data of the user, it complements the intra-APP embedding learned within each specific APP. Thus, they considerably help improve the effectiveness of the personalized advertising in each APP, and they are particularly beneficial for the cold start of the new users in the APP. In this paper, we formulate the APP-installation user embedding learning into a bipartite graph embedding problem. The main challenge in learning an effective APP-installation user embedding is the imbalanced data distribution. In this case, graph learning tends to be dominated by the popular APPs, which billions of users have installed. In other words, some niche/specialized APPs might have a marginal influence on graph learning. To effectively exploit the valuable information from the niche APPs, we decompose the APP-installation graph into a set of subgraphs. Each subgraph contains only one APP node and the users who install the APP. For each mini-batch, we only sample the users from the same subgraph in the training process. Thus, each APP can be involved in the training process in a more balanced manner. After integrating the learned APP-installation user embedding into our online personal advertising platform, we obtained a considerable boost in CTR, CVR, and revenue.
翻译:APP安装信息有助于描述用户的特性。 安装了类似的APP的用户可以分享一些共同利益,在某些情况下也会采取类似的行为。 在这项工作中,我们根据每个用户的APP安装信息学习一个用户嵌入矢量。 由于用户APP安装嵌入是可学习的,而无需依赖用户历史上APP内部的行为数据,因此它补充了在每一个具体的APP中学习的APP内部嵌入的信息。因此,它们大大有助于提高每个APP中个人化广告的效能,对于APP的新用户的冷开始特别有益。在本文中,我们将APP- 安装用户将学习嵌入双面图中的问题。 学习有效的APP安装用户嵌入的主要挑战是数据分布不均匀。 在这种情况下,图形学习倾向于由用户安装的通用APPAP所主导。 换句话说,一些特殊/专门化的APP可能会对图表学习产生边际影响。 要有效地利用来自SAPP的宝贵信息,我们要将AP- 将每个用户的升级进程解成一个亚图, 我们只能将每部的SAPP 纳入一个亚图。