Dabo-Niang, Sophie and Francq, Christian and Zakoian, Jean-Michel (2009): Combining parametric and nonparametric approaches for more efficient time series prediction.
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Abstract
We introduce a two-step procedure for more efficient nonparametric prediction of a strictly stationary process admitting an ARMA representation. The procedure is based on the estimation of the ARMA representation, followed by a nonparametric regression where the ARMA residuals are used as explanatory variables. Compared to standard nonparametric regression methods, the number of explanatory variables can be reduced because our approach exploits the linear dependence of the process. We establish consistency and asymptotic normality results for our estimator. A Monte Carlo study and an empirical application on stock market indices suggest that significant gains can be achieved with our approach.
Item Type: | MPRA Paper |
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Original Title: | Combining parametric and nonparametric approaches for more efficient time series prediction |
Language: | English |
Keywords: | ARMA representation; noisy data; Nonparametric regression; optimal prediction |
Subjects: | C - Mathematical and Quantitative Methods > C1 - Econometric and Statistical Methods and Methodology: General > C14 - Semiparametric and Nonparametric Methods: General C - Mathematical and Quantitative Methods > C2 - Single Equation Models ; Single Variables > C22 - Time-Series Models ; Dynamic Quantile Regressions ; Dynamic Treatment Effect Models ; Diffusion Processes |
Item ID: | 16893 |
Depositing User: | Christian Francq |
Date Deposited: | 21 Aug 2009 09:15 |
Last Modified: | 28 Sep 2019 15:15 |
References: | Bosq, D. (1996) Nonparametric Statistics for Stochastic Processes. Estimation and Prediction. Lecture Notes in Statist 110, Springer Verlag. Burman, P. and P. Chaudhuri (1994) A hybrid approach to parametric and nonparametric regression Technical Report No. 243, Division of Statistics, University of California Davis. Carrasco, M. and X. Chen (2002) Mixing and moment properties of various GARCH and sto\-chastic volatility models. Econometric Theory 18, 17--39. Carroll, R.J., Linton, O., Mammen, E. and Z. Xiao, (2002) More Efficient Kernel Estimation in Nonparametric Regression with Autocorrelated Errors, STICERD - Econometrics Paper Series /2002/435, Suntory and Toyota International Centres for Economics and Related Disciplines, LSE. Drost, F.C., Klaassen, C.A.J., and B.J.M. Werker (1997) Adaptive estimation in time-series models. Annals of Statistics 25, 786--817. Einsporn, R.L., and J.B. Birch (1993) Model robust regression: using nonparametric regression to improve parametric regression analyses. Technical Report 93-5, Department of Statistics, Virginia Polytechnic Institute and State University, Blacksburg, VA. Fan, Y. and A. Ullah (1999) Asymptotic Normality of a Combined Regression Estimator. Journal of Multivariate Analysis 71, 191--240 Fan, J. and Q. Yao (2003) Nonlinear Time Series: Nonparametric and Parametric Methods. Springer. Francq, C., Roy, R. and J-M. Zakoïan (2005) Goodness-of-fit Tests for ARMA Models with Uncorrelated Errors. Journal of the American Statististical Association 100, 532--544. Francq, C. and J-M. Zakoïan (1998) Estimating Linear Representations of Nonlinear Processes. Journal of Statistical Planning and Inference 68, 145--165. Francq, C. and J-M. Zakoïan (2000) Covariance matrix estimation for estimators of mixing Wold's ARMA. Journal of Statistical Planning and Inference 83, 369--394. Glad, I. (1998) Parametrically guided non-parametric regression Scandinavian Journal of Statistics 25, 649--668. Hall, P. and A. Yatchewa (2005) Unified approach to testing functional hypotheses in semiparametric contexts. Journal of Econometrics 127, 225--252. Gao, J. and H. Tong (2002) Model Specification Tests in Nonparametric Stochastic Regression Models. Journal of Multivariate Analysis 83, 324--359 (2002) Härdle, W. (1990) Applied Nonparametric Regression. Cambridge University Press: Cambridge. Härdle, W. and E. Mammen (1993) Comparing nonparametric versus parametric regression fits. Annals of Statistics 21, 1926-1947. Kreiss, J.P., Neumann, M. H and Q.W. Yao (2008) Bootstrap tests for simple structures in nonparametric time series regression. Statistics and its interface 1 367--380. Liebscher, E. (2001) Estimation of the density and the regression function under mixing conditions. Statistics \& Decisions 19, 9--26. Mack, Y.P. and B.W. Silverman (1982) Weak and strong uniform consistency of kernel regression estimates. Z. Wahrscheinlichkeitsth. verw. Geb. 61, 405--415. May, R.M. (1976) Simple mathematical models with very complicated dynamics. Nature 261, 459--467. Mays, J., Birch, J.B. and R. Einsporn (2000) An overview of model-robust regression. Journal of Statistical Computation and Simulation 66, 79--100. Pham, D.T. (1986) The mixing property of bilinear and generalised random coefficients autoregressive models. Stochastic Processes and their Applications 23, 291--300. Phillips, P.C.B. and K.-L. Xu (2005) Inference in Autoregression under Heteroskedasticity. Journal of Time Series Analysis 27, 289--308. Prakasa Rao, B.L.S. (1983) Nonparametric Functional Estimation. Academic Press, New-York. Robinson, P.M. (1983) Nonparametric estimators for time series. Journal of Time Series Analysis 4, 185--207. Romano, J.P. and L.A. Thombs (1996) Inference for Autocorrelations under Weak Assumptions. Journal of the American Statististical Association 91, 590--600. Rosenblatt, M. (1956) Remarks on Some Nonparametric Estimates of a Density Function. Annals of Mathematical Statistics 27 832--835. Schick, A. and W. Wefelmeyer (2004) Root n consistent and optimal density estimators for moving average processes. Scandinavian Journal of Statistics 31, 63--78. Timmermann, A. (2006) Forecast Combination. Handbook of Economic Forecasting, Vol.1, ed. Elliott G., Granger C. and Timmermann A., Amsterdam: North-Holland, 135--194. Xu, K.-L. and P.C.B. Phillips (2008) Adaptive Estimation of Autoregressive Models with Time-Varying Variances. Journal of Econometrics 142, 265--280. |
URI: | https://mpra.ub.uni-muenchen.de/id/eprint/16893 |