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Modeling Spatial Data Pooled over Time: Schematic Representation and Monte Carlo Evidences

机译:对随时间推移合并的空间数据建模:示意图和蒙特卡洛证据

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The spatial autocorrelation issue is now well established, and it is almost impossible to deal with spatial data without considering this reality. In addition, recent developments have been devoted to developing methods that deal with spatial autocorrelation in panel data. However, little effort has been devoted to dealing with spatial data (cross-section) pooled over time. This paper endeavours to bridge the gap between the theoretical modeling development and the application based on spatial data pooled over time. The paper presents a schematic representation of how spatial links can be expressed, depending on the nature of the variable, when combining the spatial multidirectional relations and temporal unidirectional relations. After that, a Monte Carlo experiment is conducted to establish the impact of applying a usual spatial econometric model to spatial data pooled over time. The results suggest that neglecting the temporal dimension of the data generating process can introduce important biases on autoregressive parameters and thus result in the inaccurate measurement of the indirect and total spatial effect related to the spatial spillover effect.
机译:现在已经很好地确定了空间自相关问题,如果不考虑这一现实,几乎不可能处理空间数据。另外,最近的发展致力于开发处理面板数据中空间自相关的方法。但是,随着时间的流逝,很少有工作致力于处理合并的空间数据(横截面)。本文力图弥合理论模型开发与基于随时间推移合并的空间数据的应用之间的差距。本文提出了在结合空间多向关系和时间单向关系时如何根据变量的性质来表达空间联系的示意图。之后,进行了蒙特卡洛实验,以建立将常规空间计量经济学模型应用于随时间推移而合并的空间数据的影响。结果表明,忽略数据生成过程的时间维度会在自回归参数上引入重要的偏差,从而导致与空间溢出效应相关的间接和总体空间效应的测量不准确。

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