A New Test in Parametric Linear Models against Nonparametric Autoregressive Errors
نویسنده
چکیده
This paper considers a class of parametric models with nonparametric autoregressive errors. A new test is proposed and studied to deal with the parametric specification of the nonparametric autoregressive errors with either stationarity or nonstationarity. Such a test procedure can initially avoid misspecification through the need to parametrically specify the form of the errors. In other words, we propose estimating the form of the errors and testing for stationarity or nonstationarity simultaneously. We establish asymptotic distributions of the proposed test. Both the setting and the results differ from earlier work on testing for unit roots in parametric time series regression. We provide both simulated and real–data examples to show that the proposed nonparametric unit–root test works in practice.
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A New Test in Parametric Linear Models with Nonparametric Autoregressive Errors
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تاریخ انتشار 2011