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Simultaneous estimation of cross-validation errors in least squares collocation applied for statistical testing and evaluation of the noise variance components

机译:最小二乘搭配的交叉验证错误的同时估计用于统计测试和噪声方差分量的评估

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The cross-validation technique is a popular method to assess and improve the quality of prediction by least squares collocation (LSC). We present a formula for direct estimation of the vector of cross-validation errors (CVEs) in LSC which is much faster than element-wise CVE computation. We show that a quadratic form of CVEs follows Chi-squared distribution. Furthermore, a posteriori noise variance factor is derived by the quadratic form of CVEs. In order to detect blunders in the observations, estimated standardized CVE is proposed as the test statistic which can be applied when noise variances are known or unknown. We use LSC together with the methods proposed in this research for interpolation of crustal subsidence in the northern coast of the Gulf of Mexico. The results show that after detection and removing outliers, the root mean square (RMS) of CVEs and estimated noise standard deviation are reduced about 51 and 59%, respectively. In addition, RMS of LSC prediction error at data points and RMS of estimated noise of observations are decreased by 39 and 67%, respectively. However, RMS of LSC prediction error on a regular grid of interpolation points covering the area is only reduced about 4% which is a consequence of sparse distribution of data points for this case study. The influence of gross errors on LSC prediction results is also investigated by lower cutoff CVEs. It is indicated that after elimination of outliers, RMS of this type of errors is also reduced by 19.5% for a 5 km radius of vicinity. We propose a method using standardized CVEs for classification of dataset into three groups with presumed different noise variances. The noise variance components for each of the groups are estimated using restricted maximum-likelihood method via Fisher scoring technique. Finally, LSC assessment measures were computed for the estimated heterogeneous noise variance model and compared with those of the homogeneous model. The advantage of the proposed method is the reduction in estimated noise levels for those groups with the fewer number of noisy data points.
机译:交叉验证技术是一种通过最小二乘搭配(LSC)评估和提高预测质量的流行方法。我们提出了一种直接估计LSC中交叉验证错误(CVE)向量的公式,该公式比逐元素CVE计算要快得多。我们显示CVE的二次形式遵循卡方分布。此外,后验噪声方差因子由CVE的二次形式得出。为了检测观测值中的错误,建议将估计的标准CVE作为检验统计量,可以在已知或未知噪声方差时应用。我们将LSC与本研究中提出的方法一起用于对墨西哥湾北海岸的地壳沉降进行插值。结果表明,在检测和消除异常值之后,CVE的均方根(RMS)和估计的噪声标准偏差分别降低了约51%和59%。此外,数据点的LSC预测误差的RMS和观测值的估计噪声的RMS分别降低了39%和67%。但是,在覆盖该区域的常规插值点网格上,LSC预测误差的RMS仅降低了约4%,这是此案例研究中数据点分布稀疏的结果。还通过较低的临界CVE研究了总误差对LSC预测结果的影响。结果表明,在消除离群值之后,对于5 km附近的半径,此类错误的RMS也降低了19.5%。我们提出了一种使用标准化CVE的方法,用于将数据集分为三个具有不同噪声方差的组。使用费舍尔评分技术,使用受限最大似然法估算每个组的噪声方差分量。最后,针对估计的异构噪声方差模型计算了LSC评估措施,并将其与同类模型进行了比较。所提出的方法的优点是减少了噪声数据点数量较少的那些组的估计噪声水平。

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