Article (Journal/Review)
Tests with correct size when instruments can be arbitrarily weak
Fecha
2009-10Registro en:
0269-9931 / 1464-0600
10.1016/j.jeconom.2009.01.012
000270696500006
Autor
Moreira, Marcelo J.
Institución
Resumen
This paper applies classical exponential-family statistical theory to develop a unifying framework for testing structural parameters in the simultaneous equations model under the assumption of normal errors with known reduced-form variance matrix. The results can be divided into the limited-information and full-information categories. in the limited-information model, it is possible to characterize the entire class of similar tests in a model with only one endogenous explanatory variable. In the full-information framework, this paper proposes a family of similar tests for subsets of endogenous variables' coefficients. For both limited- and full-information models, there exist power upper bounds for unbiased tests. When the model is just-identified, the Anderson-Rubin, score, and (pseudo) conditional likelihood ratio tests are optimal. When the model is over-identified, the (pseudo) conditional likelihood ratio test has power close to the power envelope when identification is strong. (C) 2009 Elsevier B.V. All rights reserved.