Black-box heterogeneous treatment effect (HTE) models are increasingly being used to create personalized policies that assign individuals to their optimal treatments. However, they are difficult to understand, and can be burdensome to maintain in a production environment. In this paper, we present a scalable, interpretable personalized experimentation system, implemented and deployed in production at Meta. The system works in a multiple treatment, multiple outcome setting typical at Meta to: (1) learn explanations for black-box HTE models; (2) generate interpretable personalized policies. We evaluate the methods used in the system on publicly available data and Meta use cases, and discuss lessons learnt during the development of the system.
翻译:黑盒多种治疗效应(HTE)模型正越来越多地被用于制定个人化政策,让个人接受最佳治疗,但难以理解,在生产环境中难以维持。本文介绍一个可扩展的、可解释的、个人化的实验系统,在梅塔生产中实施和部署。该系统以多种处理方式运作,在梅塔典型的多种结果设定:(1) 了解黑盒HTE模型的解释;(2) 产生可解释的个人化政策。我们评估了系统中用于公开数据和Meta使用案例的方法,并讨论了在系统开发过程中吸取的经验教训。