Partially adaptive estimation of nonlinear models via a normal mixture |
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Authors: | R. F. Phillips |
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Affiliation: | Department of Economics , George Washington University , Washington , 20052 , D.C. |
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Abstract: | This paper extends the partially adaptive method Phillips (1994) provided for linear models to nonlinear models. Asymptotic results are established under conditions general enough they cover both cross-sectional and time series applications. The sampling efficiency of the new estimator is illustrated in a small Monte Carlo study in which the parameters of an autoregressive moving average are estimated. The study indicates that, for non-normal distributions, the new estimator improves on the nonlinear least squares estimator in terms of efficiency. |
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Keywords: | ARMA process nonlinear regression model quasi maximum likelihood JEL Classifications:C13,C20 |
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