Inverse Conditional Probability Weighting with Clustered Data in Causal Inference

08/05/2018
by   Zhulin He, et al.
0

Estimating the average treatment causal effect in clustered data often involves dealing with unmeasured cluster-specific confounding variables. Such variables may be correlated with the measured unit covariates and outcome. When the correlations are ignored, the causal effect estimation can be biased. By utilizing sufficient statistics, we propose an inverse conditional probability weighting (ICPW) method, which is robust to both (i) the correlation between the unmeasured cluster-specific confounding variable and the covariates and (ii) the correlation between the unmeasured cluster-specific confounding variable and the outcome. Assumptions and conditions for the ICPW method are presented. We establish the asymptotic properties of the proposed estimators. Simulation studies and a case study are presented for illustration.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/08/2023

Causal Inference With Outcome-Dependent Missingness And Self-Censoring

We consider missingness in the context of causal inference when the outc...
research
07/10/2019

Quantifying Error in the Presence of Confounders for Causal Inference

Estimating average causal effect (ACE) is useful whenever we want to kno...
research
12/30/2021

Approaches to spatial confounding in geostatistics

Research in the past few decades has discussed the concept of "spatial c...
research
03/09/2020

An efficient Gehan-type estimation for the accelerated failure time model with clustered and censored data

In medical studies, the collected covariates usually contain underlying ...
research
11/10/2014

Bounding the Probability of Causation in Mediation Analysis

Given empirical evidence for the dependence of an outcome variable on an...
research
10/12/2021

Causal Mediation Analysis: Selection with Asymptotically Valid Inference

Researchers are often interested in learning not only the effect of trea...

Please sign up or login with your details

Forgot password? Click here to reset