Chapter 11

Regression Models on Longitudinal Propensity Scores

Aristide Achy-BrouMichael GriswoldConstantine Frangakis

Abstract

11.1 Introduction

11.2 Estimation Using Regression on Longitudinal Propensity Scores

11.3 Example

11.4 Summary

References

 

Abstract

Estimating causal treatment effect in longitudinal, observational data can be complex due to the need to control for selection bias in the full history of covariates used in the treatment assignment. Having a robust approach to deal with the lack of randomization between treatment groups is critical because the history of covariates used in the treatment assignment grows rapidly with the length of the observation period.

We present regression estimators that can compare longitudinal treatments ...

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