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Use and interpretation of spatial autoregressive probit models

机译:空间自回归概率模型的使用和解释

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摘要

Applications of spatial probit regression models that have appeared in the literature have incorrectly interpreted estimates from these models. Spatially dependent choices frequently arise in various modeling scenarios, including situations involving analysis of regional voting behavior, decisions by states or cities to change tax rates relative to neighboring jurisdictions, decisions by households to move or stay in a particular location. We use county-level voting results from the 2004 presidential election as an illustrative example of some issues that arise when drawing inferences from spatial probit model estimates. Although the voting example holds particular intuitive appeal that allows us to focus on interpretive issues, there are numerous other situations where these same considerations come into play. Past work regarding Bayesian Markov Chain Monte Carlo estimation of spatial probit models from LeSage and Pace (Introduction to spatial econometrics. Taylor and Francis, New York, 2009) is used, as well as derivations from LeSage et al. (J R Stat Soc Ser A Stat Soc 174(4):1007-1027, 2011) regarding proper interpretation of the partial derivative impacts from changes in the explanatory variables on the probability of voting for a candidate. As in the case of conventional probit models, the effects arising from changes in the explanatory variables depend in a nonlinear way on the levels of these variables. In non-spatial probit regressions, a common way to explore the nonlinearity in this relationship is to calculate "marginal effects" estimates using particular values of the explanatory variables (e.g., mean values or quintile intervals). The motivation for this practice is consideration of how the impact of changing explanatory variable values varies across the range of values encompassed by the sample data. Given the nonlinear nature of the normal cumulative density function transform on which the (non-spatial) probit model relies, we know that changes in explanatory variable values near the mean may have a very different impact on decision probabilities than changes in very low or high values. For spatial probit regression models, the effects or impacts from changes in the explanatory variables are more highly nonlinear. In addition, since spatial models rely on observations that each represent a location or region located on a map, the levels of the explanatory variables can be viewed as varying over space. We discuss important implications of this for proper interpretation of spatial probit regression models in the context of our election application.
机译:文献中出现的空间概率回归模型的应用对这些模型的估计有错误的解释。空间依赖的选择经常出现在各种建模场景中,包括涉及对区域投票行为的分析,各州或城市决定相对于相邻辖区改变税率,住户决定搬迁或居住在特定位置的情况。我们以2004年总统大选的县级投票结果为例,说明从空间概率模型估计中得出推论时出现的一些问题。尽管投票示例具有特殊的直观吸引力,使我们能够专注于解释性问题,但在许多其他情况下,这些相同的考虑也会起作用。使用了过去有关LeSage和Pace的空间概率模型的贝叶斯马尔可夫链蒙特卡罗估计的工作(空间计量经济学入门,泰勒和弗朗西斯,纽约,2009年),以及LeSage等人的推论。 (J R Stat Soc Ser A Stat Soc 174(4):1007-1027,2011)有关对解释变量变化对候选人投票概率的偏导数影响的正确解释。与传统的概率模型一样,解释变量的变化所产生的影响以非线性方式取决于这些变量的水平。在非空间概率回归中,探索这种关系中非线性的一种常用方法是使用解释变量的特定值(例如,平均值或五分位数间隔)来计算“边际效应”估计值。这种做法的动机是考虑更改解释变量值的影响如何在样本数据所包含的值范围内变化。考虑到(非空间)概率模型所依赖的正常累积密度函数变换的非线性性质,我们知道,均值附近的解释变量值的变化可能对决策概率的影响与非常低或高变化的影响非常不同。价值观。对于空间概率回归模型,解释变量变化产生的影响或影响是高度非线性的。另外,由于空间模型依赖于每个代表位于地图上的位置或区域的观察结果,因此可以将解释变量的级别视为随空间变化。我们讨论了在我们的选举应用程序中正确解释空间概率回归模型的重要意义。

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  • 来源
    《The Annals of regional science》 |2018年第1期|1-24|共24页
  • 作者单位

    West Virginia Univ, Reg Res Inst, Dept Agr & Resource Econ & Econ, Morgantown, WV 26506 USA;

    Texas State Univ San Marcos, Dept Finance & Econ, McCoy Coll Business Adm, Fields Chair Urban & Reg Econ, San Marcos, TX 78666 USA;

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