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LOCAL LINEAR FORECASTS USING CUBIC SMOOTHING SPLINES
Authors:Rob J  Hyndman  Maxwell L  King  Ivet  Pitrun Baki  Billah
Institution:Monash University
Abstract:This paper shows how cubic smoothing splines fitted to univariate time series data can be used to obtain local linear forecasts. The approach is based on a stochastic state‐space model which allows the use of likelihoods for estimating the smoothing parameter, and which enables easy construction of prediction intervals. The paper shows that the model is a special case of an ARIMA(0, 2, 2) model; it provides a simple upper bound for the smoothing parameter to ensure an invertible model; and it demonstrates that the spline model is not a special case of Holt's local linear trend method. The paper compares the spline forecasts with Holt's forecasts and those obtained from the full ARIMA(0, 2, 2) model, showing that the restricted parameter space does not impair forecast performance. The advantage of this approach over a full ARIMA(0, 2, 2) model is that it gives a smooth trend estimate as well as a linear forecast function.
Keywords:ARIMA models  exponential smoothing  Holt's local linear forecasts  maximum likelihood estimation  non-parametric regression  smoothing splines  state- space model  stochastic trends
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