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Variance Estimation in Spatial Regression Using a Non-parametric Semivariogram Based on Residuals

机译:基于残差的非参数半变异函数的空间回归方差估计

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摘要

The empirical semivariogram of residuals from a regression model with stationary errors may be used to estimate the covariance structure of the underlying process. For prediction (kriging) the bias of the semivariogram estimate induced by using residuals instead of errors has only a minor effect because the bias is small for small lags. However, for estimating the variance of estimated regression coefficients and of predictions, the bias due to using residuals can be quite substantial. Thus we propose a method for reducing this bias. The adjusted empirical semivariogram is then isotonized and made conditionally negative-definite and used to estimate the variance of estimated regression coefficients in a general estimating equations setup. Simulation results for least squares and robust regression show that the proposed method works well in linear models with stationary correlated errors. Copyright 2004 Board of the Foundation of the Scandinavian Journal of Statistics..
机译:来自具有固定误差的回归模型的残差的经验半变异函数可用于估计基础过程的协方差结构。对于预测(克里金法),通过使用残差而不是误差引起的半变异函数估计的偏差仅具有较小的影响,因为偏差对于较小的滞后而言较小。但是,为了估计估计的回归系数和预测的方差,由于使用残差导致的偏差可能会很大。因此,我们提出了一种减少这种偏差的方法。然后将调整后的经验半变异函数等渗,并在条件上定为负定,并用于在一般估计方程式设置中估计估计回归系数的方差。最小二乘和稳健回归的仿真结果表明,该方法在线性模型中具有固定的相关误差,效果很好。斯堪的纳维亚统计杂志基金会2004年版权所有。

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