Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
7348810 | Economics Letters | 2018 | 14 Pages |
Abstract
In a multiplicative error model (MEM), correct specification of the conditional mean function and that of the error distribution are of crucial importance. In this paper, we propose a test that can jointly check the two specifications in an MEM admitting a Markov structure. The proposed test is constructed by comparing the nonparametric kernel estimator with a parametric estimator of the marginal density function. Its asymptotic properties under the null and the alternative hypotheses are established. We propose a parametric bootstrap procedure to approximate the null distribution. A simulation study shows that the proposed test enjoys nice finite sample performance, while a real data example demonstrates its practical merit.
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Authors
Bin Guo, Shuo Li,