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Evaluation of Parameter Estimation Methods for Fitting Spatial Regression Models

机译:拟合空间回归模型的参数估计方法的评估

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Two types of spatial regression models, a spatial lag model (SLM) and a spatial error model (SEM), were applied to fit the height-diameter relationship of trees. SEM had better model fitting and performance than both SLM and ordinary least squares. Moran's I coefficients showed that SEM effectively reduced the spatial autocorrelation in the model residuals. Both real data and Monte Carlo simulations were used to compare different parameter estimation methods for the two spatial regression models, including maximum likelihood estimation (MLE), Bayesian methods, two-stage least squares (for SLM) and generalized method of moments (GMM) (for SEM). Our results indicated that GMM was close to MLE in terms of model fitting, much easier in computation, and robust to non-normality and outliers. The Bayesian method with heteroscedasticity did not effectively estimate the spatial autoregressive parameters but produced very small biases for the regression coefficients of the model when few outliers existed. FOR. SCI. 56(5):505-514.
机译:应用两种类型的空间回归模型,即空间滞后模型(SLM)和空间误差模型(SEM),以拟合树木的高度-直径关系。 SEM具有比SLM和普通最小二乘更好的模型拟合和性能。 Moran的I系数表明SEM有效降低了模型残差中的空间自相关。真实数据和蒙特卡洛模拟都用于比较两个空间回归模型的不同参数估计方法,包括最大似然估计(MLE),贝叶斯方法,两阶段最小二乘法(用于SLM)和广义矩量方法(GMM) (对于SEM)。我们的结果表明,GMM在模型拟合方面接近MLE,计算更容易,并且对非正态和离群值具有鲁棒性。具有异方差性的贝叶斯方法不能有效地估计空间自回归参数,但是当很少存在异常值时,对模型的回归系数产生很小的偏差。对于。 SCI。 56(5):505-514。

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