Simulation based selection of competing structural econometric models
نویسنده
چکیده
This paper proposes a formal model selection test for choosing between two competing structural econometric models. The procedure is based on a novel lack-oft criterion, namely, the simulated mean squared error of predictions (SMSEP), taking into account the complexity of structural econometric models. It is asymptotically valid for any xed number of simulations, and allows for any estimator which has a p n asymptotic normality or is superconsistent with a rate at n. The test is bi-directional and applicable to non-nested models which are both possibly misspeci ed. The asymptotic distribution of the test statistic is derived. The proposed test is general regardless of whether the optimization criteria for estimation of competing models are the same as the SMSEP criterion used for model selection. An empirical application using timber auction data from Oregon is used to illustrate the usefulness and generality of the proposed testing procedure. JEL Classi cation: C12, C15, C52
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