Forecasting
Residuals are the differences between the observed values and the predicted values generated by a forecasting model. They represent the errors in predictions, showing how much the actual data deviates from what the model forecasts. Understanding residuals is crucial because they help identify how well a model fits the data and whether any patterns remain unaccounted for, which can indicate that the model may need refinement.
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