##Statistics Seminar##\\ Department of Mathematics and Statistics
^ **DATE:**|Thursday, March 21, 2024 |
^ **TIME:**|1:15pm -- 2:15pm |
^ **LOCATION:**|WH 100E |
^ **SPEAKER:**|Jingze Liu, Binghamton University |
^ **TITLE:**|Continuous Treatment Effect Estimation via Generative Adversarial De-confounding |
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**Abstract**
One fundamental problem in causal inference is the treatment
effect estimation in obser- vational studies, and its key challenge is
to handle the confounding bias induced by the associations between
covariates and treatment variable. This paper study the prob- lem of
effect estimation on continuous treatment from observational data, going
beyond previous work on binary treatments. Previous work for binary
treatment focuses on de- confounding by balancing the distribution of
covariates between the treated and control groups with either propensity
score or confounder balancing techniques. In the continuous setting,
those methods would fail as we can hardly evaluate the distribution of
covariates under each treatment status. To tackle the case of continuous
treatments, this paper propose a novel Generative Adversarial
De-confounding (GAD) algorithm to eliminate the associa- tions between
covariates and treatment variable with two main steps: (1) generating an
“calibration” distribution without associations between covariates and
treatment by ran- dom perturbation; (2) learning sample weight that
transfer the distribution of observed data to the “calibration”
distribution for de-confounding with a Generative Adversarial Network.
Extensive experiments on both synthetic and real-world datasets
demonstrate that our algorithm outperforms the state-of-the-art methods
for effect estimation of con- tinuous treatment with observational data.