Practical Policy Optimization with Personalized Experimentation
Machine Learning
2023-04-03 v1
Abstract
Many organizations measure treatment effects via an experimentation platform to evaluate the casual effect of product variations prior to full-scale deployment. However, standard experimentation platforms do not perform optimally for end user populations that exhibit heterogeneous treatment effects (HTEs). Here we present a personalized experimentation framework, Personalized Experiments (PEX), which optimizes treatment group assignment at the user level via HTE modeling and sequential decision policy optimization to optimize multiple short-term and long-term outcomes simultaneously. We describe an end-to-end workflow that has proven to be successful in practice and can be readily implemented using open-source software.
Cite
@article{arxiv.2303.17648,
title = {Practical Policy Optimization with Personalized Experimentation},
author = {Mia Garrard and Hanson Wang and Ben Letham and Shaun Singh and Abbas Kazerouni and Sarah Tan and Zehui Wang and Yin Huang and Yichun Hu and Chad Zhou and Norm Zhou and Eytan Bakshy},
journal= {arXiv preprint arXiv:2303.17648},
year = {2023}
}
Comments
5 pages, 2 figures