JOURNAL ARTICLE

Randomization-Based Inference Within Principal Strata

Tracy L. NolenMichael G. Hudgens

Year: 2011 Journal:   Journal of the American Statistical Association Vol: 106 (494)Pages: 581-593

Abstract

In randomized studies, treatment comparisons conditional on intermediate post-randomization outcomes using standard analytic methods do not have a causal interpretation. An alternate approach entails treatment comparisons within principal strata defined by the potential outcomes for the intermediate outcome that would be observed under each treatment assignment. In this paper, we develop methods for randomization-based inference within principal strata. The proposed methods are compared with existing large-sample methods as well as traditional intent-to-treat approaches. This research is motivated by HIV prevention studies where few infections are expected and inference is desired within the always-infected principal stratum, i.e., all individuals who would become infected regardless of randomization assignment.

Keywords:
Randomization Inference Causal inference Principal (computer security) Randomized experiment Random assignment Outcome (game theory) Statistics Econometrics Randomized controlled trial Statistical inference Computer science Mathematics Artificial intelligence Medicine Mathematical economics Internal medicine

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36
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1.92
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61
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0.86
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Citation History

Topics

Advanced Causal Inference Techniques
Physical Sciences →  Mathematics →  Statistics and Probability
HIV/AIDS Research and Interventions
Health Sciences →  Medicine →  Infectious Diseases
Statistical Methods and Inference
Physical Sciences →  Mathematics →  Statistics and Probability
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