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A1288
Title: Sensitivity analysis for principal ignorability violation in estimating complier and noncomplier average causal effects Authors:  Trang Nguyen - Johns Hopkins Bloomberg School of Public Health (United States) [presenting]
Abstract: An important strategy for identifying principal causal effects, which are often used in settings with noncompliance, is to invoke the principal ignorability (PI) assumption. As PI is untestable, it is important to gauge how sensitive effect estimates are to its violation. We focus on the common one-sided noncompliance setting where there are two principal strata, compliers and noncompliers. Under PI, compliers and noncompliers share the same outcome-mean-given-covariates function under the control condition. For sensitivity analysis, we allow this function to differ between compilers and noncompliers in several ways, indexed by an odds ratio, a generalized odds ratio, a mean ratio, or a standardized mean difference sensitivity parameter. We tailor sensitivity analysis techniques (with any sensitivity parameter choice) to several types of PI-based main analysis methods, including outcome regression, influence function-based and weighting methods. We illustrate the proposed sensitivity analyses using several outcome types from the JOBS II study and provide code in the R-package PIsens.