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首页> 外文期刊>Environmental Modelling & Software >How certain are our uncertainty bounds? Accounting for sample variability in Monte Carlo-based uncertainty estimates
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How certain are our uncertainty bounds? Accounting for sample variability in Monte Carlo-based uncertainty estimates

机译:我们的不确定性界限如何?基于蒙特卡罗的不确定性估计的样本变异性

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摘要

It is common for model-based simulations to be reported using prediction interval estimates that characterize the lack of precision associated with the simulated values. When based on Monte-Carlo sampling to approximate the relevant probability density function(s), such estimates can significantly underestimate the width of the prediction intervals, unless the sample size is sufficiently large. Using theoretical arguments supported by numerical experiments, we discuss the nature and severity of this problem, and demonstrate how better estimates of prediction intervals can be achieved by adjusting the interval width to account for the size of the sample used in its construction. Our method is generally applicable regardless of the form of the underlying probability density function, and can be particularly useful when the model is expensive to run and large samples are not available. We illustrate its use via a simple example involving conceptual modeling of the rainfall-runoff response of a catchment.
机译:使用特征与模拟值相关联的缺乏精度的预测间隔估计是基于模型的模拟常见的。基于Monte-Carlo采样以近似相关的概率密度函数,这种估计可以显着低估预测间隔的宽度,除非样本尺寸足够大。使用数值实验支持的理论参数,我们讨论该问题的性质和严重程度,并展示通过调整间隔宽度以考虑其构造中使用的样本的尺寸来实现预测间隔的更好估计。无论潜在概率密度函数的形式,我们的方法通常适用,并且当模型运行昂贵时,可以特别有用,并且不可用大型样品。我们通过涉及集水区的降雨径流响应的概念建模的简单示例说明了它的使用。

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