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County child poverty rates in the US: a spatial regression approach

机译:美国的县儿童贫困率:空间回归方法

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We apply methods of exploratory spatial data analysis (ESDA) and spatial regression analysis to examine intercounty variation in child poverty rates in the US. Such spatial analyses are important because regression models that exclude explicit specification of spatial effects, when they exist, can lead to inaccurate inferences about predictor variables. Using county-level data for 1990, we re-examine earlier published results [Friedman and Lichter (Popul Res Policy Rev 17:91–109, 1998)]. We find that formal tests for spatial autocorrelation among county child poverty rates confirm and quantify what is obvious from simple maps of such rates: the risk of a child living in poverty is not (spatially) a randomly distributed risk at the county level. Explicit acknowledgment of spatial effects in an explanatory regression model improves considerably the earlier published regression results, which did not take account of spatial autocorrelation. These improvements include: (1) the shifting of “wrong sign” parameters in the direction originally hypothesized by the authors, (2) a reduction of residual squared error, and (3) the elimination of any substantive residual spatial autocorrelation. While not without its own problems and some remaining ambiguities, this reanalysis is a convincing demonstration of the need for demographers and other social scientists to examine spatial autocorrelation in their data and to explicitly correct for spatial externalities, if indicated, when performing multiple regression analyses on variables that are spatially referenced. Substantively, the analysis improves the estimates of the joint effects of place-influences and family-influences on child poverty.
机译:我们采用探索性空间数据分析(ESDA)和空间回归分析的方法来检查美国儿童贫困率的县际差异。这样的空间分析非常重要,因为如果存在回归模型而无法明确说明空间效应,则回归模型可能导致对预测变量的推断不准确。使用1990年的县级数据,我们重新检查了较早发表的结果[Friedman and Lichter(Popul Res Policy Rev 17:91-109,1998)]。我们发现,对郡县儿童贫困率之间的空间自相关的正式检验证实并量化了从此类贫困率的简单图上得出的明显结论:生活在贫困中的儿童的风险不是(在空间上)在县一级的随机分布的风险。在解释性回归模型中明确承认空间效应会大大改善早期发布的回归结果,该结果没有考虑空间自相关。这些改进包括:(1)在作者最初假设的方向上移动“错误符号”参数;(2)减少残差平方误差;(3)消除任何实质性的残差空间自相关。尽管并非没有其自身的问题和一些尚存的歧义,但这种重新分析证明了人口统计学家和其他社会科学家在对数据进行多元回归分析时需要检查其数据中的空间自相关并明确校正空间外部性(如果有说明)的必要性。空间参考的变量。实质上,该分析改进了影响地方影响和家庭影响对儿童贫困的共同影响的估计。

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