MAE (Mean Absolute Error)
Mean Absolute Error (MAE) is a statistical measure used to evaluate forecast accuracy by calculating the average absolute difference between predicted and realized values.
Unlike squared-error metrics, MAE treats all forecast deviations proportionally, making it easier to interpret in practical price units.
MAE is commonly used in commodity forecasting to assess model consistency across time periods and market conditions.
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