On robust local polynominal estimation with long-memory errors
Prediction in time series models with a trend requires reliable estimation of the trend function at the right end of the observed series. Local polynomial smoothing is a suitable tool because boundary corrections are included implicitly. However, outliers may lead to unreliable estimates, if least squares regression is used. In this paper, local polynomial smoothing based on M-estimation is considered for the case where the error process exhibits long-range dependence. In constrast to the iid case, all M-estimators are asymptotically equivalent to the least square solution, under the (ideal) Gaussian model. Outliers turn out to have a major effect on nonrobust bandwidth selection, in particular due to the change of the dependence structure.
Year of publication: |
2000
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Authors: | Beran, Jan ; Feng, Yuanhua ; Ghosh, Sucharita ; Sibbertsen, Philipp |
Institutions: | Institut für Wirtschafts- und Sozialstatistik, Universität Dortmund |
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