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noncomplyR (version 1.0)

Bayesian Analysis of Randomized Experiments with Non-Compliance

Description

Functions for Bayesian analysis of data from randomized experiments with non-compliance. The functions are based on the models described in Imbens and Rubin (1997) . Currently only two types of outcome models are supported: binary outcomes and normally distributed outcomes. Models can be fit with and without the exclusion restriction and/or the strong access monotonicity assumption. Models are fit using the data augmentation algorithm as described in Tanner and Wong (1987) .

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Version

Install

install.packages('noncomplyR')

Monthly Downloads

172

Version

1.0

License

GPL-2

Maintainer

Scott Coggeshall

Last Published

August 24th, 2017

Functions in noncomplyR (1.0)

noncomplyR

noncomplyR
summarize_chain

Posterior Inference based on a Sample from the Posterior
vitaminA

Vitamin A Randomized Trial Data Set
cace

Compute the Posterior Distribution of the CACE
compliance_chain

Data Augmentation for Non-compliance analysis