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Evaluating two methods of estimating error variances using simulated data sets with known errors

机译:使用已知误差的模拟数据集评估两种估计误差方差的方法

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In this paper we compare two different methods of estimating the error variances of two or more independent data sets. One method, called the three-cornered hat (3CH) method, requires three data sets. Another method, which we call the two-cornered hat (2CH) method, requires only two data sets. Both methods have been used in previous studies to estimate the error variances associated with a number of physical and geophysical data sets. A key assumption in both methods is that the errors of the data sets are not correlated, although some studies have considered the effect of the partial correlation of representativeness errors in two or more of the data sets. We compare the 3CH and 2CH methods using a simple model to simulate three and two data sets with various error correlations and biases. With this model, we know the exact error variances and covariances, which we use to assess the accuracy of the 3CH and 2CH estimates. We examine the sensitivity of the estimated error variances to the degree of error correlation between two of the data sets as well as the sample size. We find that the 3CH method is less sensitive to these factors than the 2CH method and hence is more accurate. We also find that biases in one of the data sets has a minimal effect on the 3CH method, but can produce large errors in the 2CH method.
机译:在本文中,我们比较了两种不同的估计两个或多个独立数据集误差方差的方法。一种方法称为三角帽子(3CH)方法,需要三个数据集。另一种方法,我们称为两角帽子(2CH)方法,仅需要两个数据集。在先前的研究中已经使用了这两种方法来估计与许多物理和地球物理数据集相关的误差方差。这两种方法的一个关键假设是,数据集的误差不相关,尽管一些研究已经考虑了两个或多个数据集中的代表性误差的部分相关的影响。我们使用一个简单的模型比较了3CH和2CH方法,以模拟具有各种误差相关性和偏差的三个和两个数据集。使用此模型,我们知道确切的误差方差和协方差,我们将其用于评估3CH和2CH估计的准确性。我们检查了估计误差方差对两个数据集之间误差相关程度以及样本量的敏感性。我们发现3CH方法对这些因素的敏感性低于2CH方法,因此更准确。我们还发现,其中一个数据集的偏差对3CH方法的影响最小,但在2CH方法中可能会产生较大的误差。

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