Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
998507 | International Journal of Forecasting | 2007 | 14 Pages |
The least squares estimation method can be severely affected by a small number of outliers as can other ordinary estimation methods for regression models, thus providing poor out-of-sample forecasts. This paper suggests a robust regression approach, based on the S-estimation method, for constructing forecasting models that are less sensitive to data contamination by outliers. A robust linear autoregressive (RAR) and a robust neural network (RNN) model are estimated to study the predictability of two exchange rates at the 1-, 3- and 6-month horizons. We compare the predictive ability of the robust models to those of the random walk (RW), standard linear autoregressive (AR) and neural network (NN) models in terms of forecast accuracy and sign predictability measures. We find that robust models tend to improve the forecasting accuracy of the AR and of the NN at all time horizons. Robust models are also shown to have significant market timing ability at all forecast horizons.