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Estimation of Error Variance-Covariance Parameters Using Multivariate Geographically Weighted Regression Model

机译:多变量地理加权回归模型估计误差方差 - 协方差参数

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The Multivariate Geographically Weighted Regression (MGWR) model is a development of the Geographically Weighted Regression (GWR) model that takes into account spatial heterogeneity and autocorrelation error factors that are localized at each observation location. The MGWR model is assumed to be an error vector ε that distributed as a multivariate normally with zero vector mean and variance-covariance matrix Σ at each location ui,vi, which Σ is sized qxq for samples at the i-location. In this study, the estimated error variance-covariance parameters is obtained from the MGWR model using Maximum Likelihood Estimation (MLE) and Weighted Least Square (WLS) methods. The selection of the WLS method is based on the weighting function measured from the standard deviation of the distance vector between one observation location and another observation location. This test uses a statistical inference procedure by reducing the MGWR model equation so that the estimated error variance-covariance parameters meet the characteristics of unbiased. This study also provides researchers with an understanding of statistical inference procedures.
机译:多变量地理加权回归(MGWR)模型是地理加权回归(GWR)模型的发展,其考虑了在每个观察位置本地化的空间异质性和自相关误差因子。假设MGWR模型是误差向量ε,其作为多变量,通常在每个位置UI,VI处具有零载体平均值和方差协方差矩阵σ,该σ是I-Location在I-Location的样本的大小QXQ。在本研究中,使用最大似然估计(MLE)和加权最小二乘(WLS)方法从MGWR模型获得估计的误差方差协方差参数。 WLS方法的选择基于从一个观察位置与另一观察位置之间的距离矢量的标准偏差测量的加权函数。该测试通过减少MGWR模型方程来使用统计推理过程,使得估计的误差方差 - 协方差参数符合非偏见的特征。本研究还为研究人员提供了理解统计推理程序。

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