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Estimation Bias in the First-Order Autoregressive Model and Its Impact on Predictions and Prediction Intervals

机译:一阶自回归模型中的估计偏差及其对预测和预测区间的影响

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The least squares estimate of the autoregressive coefficient in the AR(J) model is known to be biased towards zero, especially for parameters close to the stationarity boundary. Several methods for correcting the autoregressive parameter estimate for the bias have been suggested. Using simulations, we study the bias and the mean square error of the least squares estimate and the bias-corrections proposed by Kendall and Quenouille.rnWe also study the mean square forecast error and the coverage of the 95% prediction interval when using the biased least squares estimate or one of its bias-corrected versions. We find that the estimation bias matters little for point forecasts, but that it affects the coverage of the prediction intervals. Prediction intervals for forecasts more than one step ahead, when calculated with the biased least squares estimate, are too narrow.
机译:已知AR(J)模型中自回归系数的最小二乘估计偏​​向零,尤其是对于接近平稳边界的参数。已经提出了几种用于校正自回归参数估计偏差的方法。通过模拟,我们研究了最小二乘估计的偏差和均方误差以及Kendall和Quenouille提出的偏差校正.rn我们还研究了当使用偏差最小时的均方预报误差和95%预测区间的覆盖率平方估计值或其偏差校正版本之一。我们发现估计偏差对于点预测几乎没有影响,但是会影响预测间隔的覆盖范围。如果使用有偏最小二乘估计值进行计算,则提前多于一个预测值的预测时间间隔太窄。

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