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首页> 外文期刊>Journal of Forecasting >Identification of Asymmetric Prediction Intervals through Causal Forces
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Identification of Asymmetric Prediction Intervals through Causal Forces

机译:通过因果力确定非对称预测区间

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摘要

When causal forces are specified, the expected direction of the trend can be compared with the trend based on extrapolation. Series in which the expected trend conflicts with the extrapolated trend are called contrary series. We hypothesized that contrary series would have asymmetric forecast errors, with larger errors in the direction of the expected trend. Using annual series that contained minimal information about causality, we examined 671 contrary forecasts. As expected, most (81%) of the errors were in the direction of the causal forces. Also as expected, the asymmetries were more likely for longer forecast horizons, for six-year-ahead forecasts, 89% of the forecasts were in the expected direction. The asymmetries were often substantial. Contrary series should be flagged and treated separately when prediction intervals are estimated, perhaps by shifting the interval in the direction of the causal forces.
机译:如果指定了因果力,则可以将趋势的预期方向与基于外推的趋势进行比较。预期趋势与外推趋势冲突的序列称为相反序列。我们假设反向序列将具有不对称的预测误差,而在预期趋势的方向上误差较大。使用包含因果关系最少信息的年度系列,我们检查了671个相反的预测。正如预期的那样,大多数错误(81%)是在因果力方向上。同样,正如预期的那样,对于更长的预测范围,不对称的可能性更大,对于六年前的预测,有89%的预测处于预期的方向。不对称性通常很严重。当估计预测间隔时,应标记反序并分别对待,也许可以通过沿因果力方向移动间隔。

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