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Assessing Goodness of Fit for Verifying Probabilistic Forecasts

机译:评估适合验证概率预测的良好

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The verification of probabilistic forecasts in hydro-climatology is integral to their development, use, and adoption. We propose here a means of utilizing goodness of fit measures for verifying the reliability of probabilistic forecasts. The difficulty in measuring the goodness of fit for a probabilistic prediction or forecast is that predicted probability distributions for a target variable are not stationary in time, meaning one observation alone exists to quantify goodness of fit for each prediction issued. Therefore, we suggest an additional dissociation that can dissociate target information from the other time variant part—the target to be verified in this study is the alignment of observations to the predicted probability distribution. For this dissociation, the probability integral transformation is used. To measure the goodness of fit for the predicted probability distributions, this study uses the root mean squared deviation metric. If the observations after the dissociation can be assumed to be independent, the mean square deviation metric becomes a chi-square test statistic, which enables statistically testing the hypothesis regarding whether the observations are from the same population as the predicted probability distributions. An illustration of our proposed rationale is provided using the multi-model ensemble prediction for El Ni?o–Southern Oscillation.
机译:验证水力气候中的概率预测是他们的开发,使用和采用的一体化。我们在此提出了一种利用良好措施来验证概率预测可靠性的手段。测量概率预测或预测的拟合良好的难度是目标变量的预测概率分布在时间不静程,这意味着单独的一个观察以量化为每个预测的拟合的良好。因此,我们建议一个额外的解离,其可以从其他时间变体部分解散目标信息 - 在本研究中核实的目标是对预测概率分布的观察的对准。对于这种解离,使用概率积分变换。为了测量拟合概率分布的良好性,本研究使用根均方平方偏差度量。如果可以假设解离后的观察是独立的,则平均方偏差度量变为Chi-Square测试统计,这使得能够统计测试关于观察是否与预测概率分布相同的群体的假设。使用EL NI的多模型集合预测提供了我们所提出的理由的说明。

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