This paper is concerned with robust estimation under moment restrictions. A moment restriction model is semiparametric and distribution‐free; therefore it imposes mild assumptions. Yet it is reasonable to expect that the probability law of observations may have some deviations from the ideal distribution being modeled, due to various factors such as measurement errors. It is then sensible to seek an estimation procedure that is robust against slight perturbation in the probability measure that generates observations. This paper considers local deviations within shrinking topological neighborhoods to develop its large sample theory, so that both bias and variance matter asymptotically. The main result shows that there exists a computationally convenient estimator that achieves optimal minimax robust properties. It is semiparametrically efficient when the model assumption holds, and, at the same time, it enjoys desirable robust properties when it does not.
MLA
Kitamura, Yuichi, et al. “Robustness, Infinitesimal Neighborhoods, and Moment Restrictions.” Econometrica, vol. 81, .no 3, Econometric Society, 2013, pp. 1185-1201, https://doi.org/10.3982/ECTA8617
Chicago
Kitamura, Yuichi, Taisuke Otsu, and Kirill Evdokimov. “Robustness, Infinitesimal Neighborhoods, and Moment Restrictions.” Econometrica, 81, .no 3, (Econometric Society: 2013), 1185-1201. https://doi.org/10.3982/ECTA8617
APA
Kitamura, Y., Otsu, T., & Evdokimov, K. (2013). Robustness, Infinitesimal Neighborhoods, and Moment Restrictions. Econometrica, 81(3), 1185-1201. https://doi.org/10.3982/ECTA8617
The Executive Committee of the Econometric Society has approved an increase in the submission fees for papers in Econometrica. Starting January 1, 2025, the fee for new submissions to Econometrica will be US$125 for regular members and US$50 for student members.
By clicking the "Accept" button or continuing to browse our site, you agree to first-party and session-only cookies being stored on your device. Cookies are used to optimize your experience and anonymously analyze website performance and traffic.