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Practical Policy Optimization with Personalized Experimentation

Authors :
Garrard, Mia
Wang, Hanson
Letham, Ben
Singh, Shaun
Kazerouni, Abbas
Tan, Sarah
Wang, Zehui
Huang, Yin
Hu, Yichun
Zhou, Chad
Zhou, Norm
Bakshy, Eytan
Publication Year :
2023

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.<br />5 pages, 2 figures

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....d0b3b2b91e6f033a13606458f9a0d89e