Selection between models through multi-step-ahead forecasting |
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Authors: | Tucker S. McElroy David F. Findley |
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Affiliation: | Statistical Research Division, U.S. Census Bureau, 4600 Silver Hill Road, Washington, DC 20233-9100, USA |
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Abstract: | We develop and show applications of two new test statistics for deciding if one ARIMA model provides significantly better h-step-ahead forecasts than another, as measured by the difference of approximations to their asymptotic mean square forecast errors. The two statistics differ in the variance estimates used for normalization. Both variance estimates are consistent even when the models considered are incorrect. Our main variance estimate is further distinguished by accounting for parameter estimation, while the simpler variance estimate treats parameters as fixed. Their broad consistency properties offer improvements to what are known as tests of Diebold and Mariano (1995) type, which are tests that treat parameters as fixed and use variance estimates that are generally not consistent in our context. We show how these statistics can be calculated for any pair of ARIMA models with the same differencing operator. |
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Keywords: | ARIMA models Diebold&ndash Mariano tests Incorrect models Misspecified models Model selection Parameter estimation effects Time series |
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