Heterogeneous Treatment Effect
Heterogeneous treatment effects (HTE) research focuses on identifying how the impact of a treatment varies across individuals or subgroups, moving beyond average treatment effects. Current research emphasizes developing robust and efficient methods for estimating conditional average treatment effects (CATEs), employing various machine learning models such as Bayesian Causal Forests, gradient boosting trees, and meta-learners, often incorporating techniques to address confounding and covariate shift. This field is crucial for advancing personalized interventions in diverse areas like medicine, policy, and marketing, enabling more targeted and effective strategies based on individual characteristics.
Papers
January 1, 2023
December 30, 2022
December 2, 2022
November 19, 2022
November 7, 2022
October 11, 2022
July 19, 2022
July 15, 2022
June 25, 2022
June 16, 2022
June 13, 2022
June 10, 2022
June 1, 2022
May 21, 2022
May 13, 2022
April 28, 2022
April 1, 2022
March 21, 2022
February 25, 2022