Published November 1, 2021
| Version v1
Journal article
Open
Minimizing sensitivity to model misspecification
Description
We propose a framework for estimation and inference when the model may be misspecified. We rely on a local asymptotic approach where the degree of misspecification is indexed by the sample size. We construct estimators whose mean squared error is minimax in a neighborhood of the reference model, based on one‐step adjustments. In addition, we provide confidence intervals that contain the true parameter under local misspecification. As a tool to interpret the degree of misspecification, we map it to the local power of a specification test of the reference model. Our approach allows for systematic sensitivity analysis when the parameter of interest may be partially or irregularly identified. As illustrations, we study three applications: an empirical analysis of the impact of conditional cash transfers in Mexico where misspecification stems from the presence of stigma effects of the program, a cross‐sectional binary choice model where the error distribution is misspecified, and a dynamic panel data binary choice model where the number of time periods is small and the distribution of individual effects is misspecified.
Files
Minimizing-sensitivity-to-model-misspecification.pdf
Additional details
Identifiers
- DOI
- 10.3982/QE1930
- Other
- oai:uchicago.tind.io:5143
Funding
- NSF
- SES-1658920
- Economic and Social Research Council
- ES-589-28-0001
- Economic and Social Research Council
- RES-589-28-0002
- Economic and Social Research Council
- ES/P008909/1
- European Research Council
- ERC-2014-CoG-646917-ROMIA
- European Research Council
- ERC-2018-CoG-819086-PANEDA