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Recursive estimation and forecasting of non-stationary time series
Authors:C. N. Ng  P. C. Young
Abstract:The paper presents a unified, fully recursive approach to the modelling and forecasting of non-stationary time-series. The basic time-series model, which is based on the well-known ‘component’ or ‘structuraL’ form, is formulated in state-space terms. A novel spectral decomposition procedure, based on the exploitation of recursive smoothing algorithms, is then utilized to simplify the procedures of model identification and estimation. Finally, the fully recursive formulation allows for conventional or self-adaptive implementation of state-space forecasting and seasonal adjustment. Although the paper is restricted to the consideration of univariate time series, the basic approach can be extended to handle explanatory variables or full multivariable (vector) series.
Keywords:Recursive estimation  Forecasting  Smoothing  Interpolation  Seasonal adjustment  Component model  Adaptive methods  Time-variable parameters  Non-stationary series  Spectral decomposition
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