Partial identification for discrete data with nonignorable missing outcomes
Nonignorable missing outcomes are common in real world datasets and often require strong parametric assumptions to achieve identification. These assumptions can be implausible or untestable, and so we may forgo them in favour of partially identified models that narrow the set of a priori possible va...
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Zusammenfassung: | Nonignorable missing outcomes are common in real world datasets and often
require strong parametric assumptions to achieve identification. These
assumptions can be implausible or untestable, and so we may forgo them in
favour of partially identified models that narrow the set of a priori possible
values to an identification region. Here we propose a new nonparametric Bayes
method that allows for the incorporation of multiple clinically relevant
restrictions of the parameter space simultaneously. We focus on two common
restrictions, instrumental variables and the direction of missing data bias,
and investigate how these restrictions narrow the identification region for
parameters of interest. Additionally, we propose a rejection sampling algorithm
that allows us to quantify the evidence for these assumptions in the data. We
compare our method to a standard Heckman selection model in both simulation
studies and in an applied problem examining the effectiveness of cash-transfers
for people experiencing homelessness. |
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DOI: | 10.48550/arxiv.2308.07319 |