The Multiplicative Quasi-Instrumental Variable Model
Jiewen Liu, Chan Park, David Richardson, and Eric J. Tchetgen Tchetgen

TL;DR
This paper introduces the MQIV model for causal inference that handles imperfect instruments and violations of exclusion restrictions, providing new identification and estimation methods.
Contribution
It develops a nonparametric identification framework and robust estimators for a multiplicative treatment model with imperfect instruments.
Findings
The MQIV model allows identification despite exclusion restriction violations.
Proposed estimators are multiply robust and semiparametric efficient.
Simulation and application demonstrate the method's effectiveness.
Abstract
We introduce the Multiplicative Quasi-Instrumental Variable (MQIV) model, a framework for causal inference with unmeasured confounding that leverages an instrument that may be imperfectly exogenous. We allow the candidate quasi-instrument to have a direct effect on the outcome not mediated by the treatment, thus violating the standard IV exclusion restriction. We establish nonparametric identification of the population average treatment effect on the treated (ATT) under a treatment model that is multiplicative with respect to the quasi-IV and the hidden confounder (Hernan and Robins, 2006). Such a multiplicative treatment model may arise naturally either when treatment occurs only if two independent instrument-driven and confounder-driven causal mechanisms are present; or alternatively, when an instrument's effect on treatment uptake is inherently heterogeneous and scales with a…
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