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Estimation and Selection of Spatial Weight Matrix in a Spatial Lag Model

机译:空间滞后模型中空间重量矩阵的估计与选择

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Spatial econometric models allow for interactions among variables through the specification of a spatial weight matrix. Practitioners often face the risk of misspecification of such a matrix. In many problems a number of potential specifications exist, such as geographic distances, or various economic quantities among variables. We propose estimating the best linear combination of these specifications, added with a potentially sparse adjustment matrix. The coefficients in the linear combination, together with the sparse adjustment matrix, are subjected to variable selection through the adaptive least absolute shrinkage and selection operator (LASSO). As a special case, if no spatial weight matrices are specified, the sparse adjustment matrix becomes a sparse spatial weight matrix estimator of our model. Our method can therefore, be seen as a unified framework for the estimation and selection of a spatial weight matrix. The rate of convergence of all proposed estimators are determined when the number of time series variables can grow faster than the number of time points for data, while oracle properties for all penalized estimators are presented. Simulations and an application to stocks data confirms the good performance of our procedure.
机译:空间计量型号允许通过空间权重矩阵的规范进行变量之间的相互作用。从业者经常面临这种矩阵的误操作的风险。在许多问题中,存在许多潜在规格,例如地理距离,或变量之间的各种经济数量。我们提出估算这些规范的最佳线性组合,添加了潜在稀疏的调整矩阵。线性组合中的系数与稀疏调节矩阵一起通过自适应最小绝对收缩和选择操作员(套索)进行可变选择。作为特殊情况,如果没有指定空间权重矩阵,则稀疏调整矩阵成为我们模型的稀疏空间权重矩阵估计器。因此,我们的方法可以被视为估计和选择空间权重矩阵的统一框架。确定所有提出估计器的收敛速度是确定时间序列变量的数量比数据的时间点数量快,而呈现所有惩罚估算器的Oracle属性。对库存数据的模拟和应用程序确认了我们程序的良好表现。

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