Learning large-scale industrial recommender system models by fitting them to historical user interaction data makes them vulnerable to conformity bias. This may be due to a number of factors, including the fact that user interests may be difficult to determine and that many items are often interacted with based on ecosystem factors other than their relevance to the individual user. In this work, we introduce CAM2, a conformity-aware multi-task ranking model to serve relevant items to users on one of the largest industrial recommendation platforms. CAM2 addresses these challenges systematically by leveraging causal modeling to disentangle users' conformity to popular items from their true interests. This framework is generalizable and can be scaled to support multiple representations of conformity and user relevance in any large-scale recommender system. We provide deeper practical insights and demonstrate the effectiveness of the proposed model through improvements in offline evaluation metrics compared to our production multi-task ranking model. We also show through online experiments that the CAM2 model results in a significant 0.50% increase in aggregated user engagement, coupled with a 0.21% increase in daily active users on Facebook Watch, a popular video discovery and sharing platform serving billions of users.
翻译:根据用户历史交互数据拟合大型工业推荐系统模型容易受到一致性偏见的影响。这可能由多种因素造成,包括难以确定用户的兴趣和许多物品都是基于系统生态因素而不是与个人用户相关的。在这项工作中,我们引入CAM2,这是一种一致性感知的多任务排名模型,用于在最大的工业推荐平台上向用户推荐相关物品。CAM2通过利用因果建模来系统地解决这些挑战,以将用户对热门物品的一致性与他们的真实兴趣区分开来。该框架是通用的,可扩展以支持在任何大规模推荐系统中对一致性和用户相关性的多种表示。我们提供了更深入的实践见解,并通过改进与我们的生产多任务排名模型相比的离线评估指标来证明所提出模型的有效性。我们还通过在线实验表明,CAM2模型导致Facebook Watch的聚合用户参与度显着增加了0.50%,同时每日活跃用户增加了0.21%。