Abstract:
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This article studies the usefulness of low-order ARMA model in the prediction of long-memory time series with fractionally differenced ARFIMA(0, d, 0) structure, where -0.5 < d < 0.5. We argue that if interest is in short-term prediction, a suitably adapted ARMA (2, 2) model can produce competitive forecasts. Numerical evaluation shows its prediction error variance is, at most, 0.6% higher than that of the true model at first step ahead and, at most, 2.8% higher up to 10 steps ahead. However, caution needs to be taken when using the adapted ARMA model for long-term prediction of strongly persistent time series. The predictability memory content of the adapted ARMA (2, 2) model is also studied and compared to that of the ARFIMA (0, d, 0). For illustration, we forecast the US consumer price index and inflation rates for four countries. Adapted ARMA (2, 2) is compared to ARFIMA (0, d, 0) fits using an out-of-sample prediction mean square-errors criterion. Empirical results suggest that the performance of ARMA (2, 2) compares favorably to (0 ,d, 0) for forecasts up to 100 steps ahead.
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