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An invalidation test for predictive models

机译:预测模型的失效检验

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The standard means of establishing predictive ability in hydrological models is by finding how well predictions match independent validation data. This matching may not be particularly good in some situations such as seasonal flow forecasting and the question arises as to whether a given model has any predictive capacity. A model-independent significance test of the presence of predictive ability is proposed through random permutations of the predicted values. The null hypothesis of no model predictive ability is accepted if there is a sufficiently high probability that a random reordering of the predicted values will yield a better fit to the validation data. The test can achieve significance even with poor model predictions and its value is for invalidating bad models rather than verifying good models as suitable for application. Some preliminary applications suggest that test outcomes will often be similar at the 0.05 level for standard fit measures using absolute or squared residuals. In addition to hydrological application, the test may also find use as a base quality control measure for predictive models generally. (C) 2007 Elsevier B.V. All rights reserved.
机译:在水文模型中建立预测能力的标准方法是找到预测与独立验证数据的匹配程度。在某些情况下,例如季节性流量预测,这种匹配可能不是特别好,并且出现了一个问题,即给定模型是否具有预测能力。通过预测值的随机排列,提出了一种与模型无关的预测能力存在的显着性检验。如果预测值的随机重新排序会产生与验证数据更好的拟合的足够高的可能性,则不接受没有模型预测能力的零假设。该测试即使在模型预测不佳的情况下也可以达到显着性,其价值在于使不良模型无效,而不是验证适用于应用的良好模型。一些初步的应用表明,使用绝对残差或平方残差的标准拟合度量的测试结果通常在0.05水平上相似。除了水文应用外,该测试还可以用作一般预测模型的基本质量控制措施。 (C)2007 Elsevier B.V.保留所有权利。

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