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A Simulation Study on Specifying a Regression Model for Spatial Data: Choosing between Autocorrelation and Heterogeneity Effects

机译:用于空间数据的回归模型的仿真研究:选择自相关和异质性效应

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摘要

In this simulation study, regressions specified with autocorrelation effects are compared against those with relationship heterogeneity effects, and in doing so, provides guidance on their use. Regressions investigated are: (1) multiple linear regression, (2) a simultaneous autoregressive error model, and (3) geographically weighted regression. The first is nonspatial and acts as a control, the second accounts for stationary spatial autocorrelation via the error term, while the third captures spatial heterogeneity through the modeling of nonstationary relationships between the response and predictor variables. The geostatistical-based simulation experiment generates data and coefficients with known multivariate spatial properties, all within an area-unit spatial setting. Spatial autocorrelation and spatial heterogeneity effects are varied and accounted for. On fitting the regressions, that each have different assumptions and objectives, to very different geographical processes, valuable insights to their likely performance are uncovered. Results objectively confirm an inherent interrelationship between autocorrelation and heterogeneity, that results in an identification problem when choosing one regression over another. Given this, recommendations on the use and implementation of these spatial regressions are suggested, where knowledge of the properties of real study data and the analytical questions being posed are paramount.
机译:在该模拟研究中,将用自相关效果指定的回归与具有关系异质性效应的人进行比较,并且在这样做方面,为他们的使用提供指导。研究的回归是:(1)多元线性回归,(2)同时自回归误差模型,(3)地理加权回归。第一是非缺陷的并且充当控制,第二个帐户通过误差项来静止空间自相关,而第三则通过响应和预测变量之间的非间断关系建模捕获空间异质性。基于地统计学的仿真实验产生具有已知多变量空间特性的数据和系数,全部在区域单元空间设置内。空间自相关和空间异质性效果变化并占了。在拟合回归时,每个都有不同的假设和目标,对非常不同的地理过程,对他们可能的性能的有价值的见解被发现。结果客观地确认了自相关和异质性之间的固有相互关系,这导致在另一个回归时产生识别问题。鉴于这一点,提出了关于使用和实施这些空间回归的建议,其中了解实际研究数据的属性和所构成的分析问题是至关重要的。

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  • 来源
    《Geographical analysis》 |2019年第2期|151-181|共31页
  • 作者

    Harris Paul;

  • 作者单位

    Rothamsted Res SSGS North Wyke EX20 2SB Okehampton England;

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  • 原文格式 PDF
  • 正文语种 eng
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