Lazy learning; Long-term time series prediction; Multiple-output models; NN3 prediction competition; Accurate prediction; Ahead-time; Common features; Conventional approach; Direct approach; Experimental section; Future Horizons; Long-term forecasting; Multi-step; Multiple input single outputs; Stochastic properties; Time series forecasting; Time series prediction; Computer Science Applications; Cognitive Neuroscience; Artificial Intelligence
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