Using Monte Carlo methodology, this paper investigates the effect of dynamics and simultaneity on the finite sample properties of instrumental variables statistics for testing nested and non-nested hypotheses. Simple numerical-analytical formulae (response surfaces) are obtained which closely approximate the statistics' unknown size and power functions for a dynamic simultaneous equations model. The analysis illustrates the value and limitations of asymptotic theory in interpreting finite sample properties. Two practical results arise. The $F$ form of the Wald statistic is favored over its $\chi^2$ form, and "large-$\sigma$" and small "effective" sample size strongly affect the test of over-identifying restrictions and the Cox-type test.
MLA
Ericsson, Neil R.. “Monte Carlo Methodology and the Finite Sample Properties of Instrumental Variables Statistics for Testing Nested and Non-Nested Hypotheses.” Econometrica, vol. 59, .no 5, Econometric Society, 1991, pp. 1249-1277, https://www.jstor.org/stable/2938367
Chicago
Ericsson, Neil R.. “Monte Carlo Methodology and the Finite Sample Properties of Instrumental Variables Statistics for Testing Nested and Non-Nested Hypotheses.” Econometrica, 59, .no 5, (Econometric Society: 1991), 1249-1277. https://www.jstor.org/stable/2938367
APA
Ericsson, N. R. (1991). Monte Carlo Methodology and the Finite Sample Properties of Instrumental Variables Statistics for Testing Nested and Non-Nested Hypotheses. Econometrica, 59(5), 1249-1277. https://www.jstor.org/stable/2938367
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