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Theory Development on Uncertainty Estimation for Measures of Data Misfit

机译:数据不匹配度量的不确定性估计的理论发展

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This paper employs Bayesian inference theory to study the uncertainty caused by different measures of data misfit,i.e.sum-of-square measure,Huber measure and robust measure.Probability distributions for various commonly used measures are developed,providing theoretical background for uncertainty estimates caused by a particular choice of misfit measures.Inversion results from a simple 3-layer Magnetotelluric (MT) case show that for Gaussian data,uncertainties caused by sum-of-square measure,Huber measure and robust meausre are generally similar.For the perturbed data with 2 outliers added to the Gaussian data,uncertainty distributions of sum-of-squares are relatively smaller than that of Huber measure and robust measure.The sum-of-square measure artificially generates small uncertainty estimates and gives an illusion that the inversion has been better resolved.
机译:本文运用贝叶斯推理理论研究了数据失配,平方和,Huber和鲁棒性的不同度量所引起的不确定性。建立了各种常用度量的概率分布,为由不确定性引起的不确定性估计提供了理论背景。一个简单的三层大地电磁(MT)案例的反演结果表明,对于高斯数据,平方和测度,Huber测度和鲁棒测度引起的不确定性通常相似。将2个离群值添加到高斯数据中,平方和的不确定性分布相对小于Huber度量和鲁棒度量的不确定性分布。平方和度量人为地生成了较小的不确定性估计,并给人一种倒数更好的幻觉。解决。

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