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EXPLORING SPATIOTEMPORALLY VARYING REGRESSED RELATIONSHIPS: THE GEOGRAPHICALLY WEIGHTED PANEL REGRESSION ANALYSIS

机译:探索时尚变化的回归关系:地理加权面板回归分析

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Regression analysis with geographic information needs to take into consideration the inherent spatial autocorrelation and heterogeneity of the data. Due to such spatial effects, it is found that local regression such as the geographically weighted regression (GWR) tends to capture the relationships better. In addition, in panel data analysis, the variable coefficient panel regression can borrow such ideas of spatial autocorrelation and heterogeneity to develop models that would fit the data better and produce more accurate results than the pooled models. Despite the fact that both methods are well developed and utilized, models that take advantage of both methods simultaneously have eluded the research community. Combination of GWR and panel data analysis techniques has an obvious benefit: the added temporal dimension enlarges the sample size hence contains more degrees of freedom, adds more variability, renders less collinearity among the variables, and gives more efficiency for estimation. This research for the first time attempts such combination using a short regional development panel data from 1995 - 2001 of the Greater Beijing Area (GBA), China. A geographically weighted panel regression (GWPR) model is developed arid compared with both cross-sectional GWR and panel regression. The study reveals very promising results that the GWPR indeed produced better and clearer results than both cross-sectional GWR and the panel data model. This indicates the new method would potentially produce substantial new patterns and new findings that cannot be revealed via pure cross-sectional or time-series analysis.
机译:使用地理信息的回归分析需要考虑数据的固有空间自相关和数据的异质性。由于这种空间效应,发现诸如地理加权回归(GWR)之类的本地回归倾向于捕获更好的关系。此外,在面板数据分析中,变量系数面板回归可以借用空间自相关和异质性的这种思想,以开发更好地符合数据的模型,并产生比池模型更准确的结果。尽管这两种方法都是发达的,并且使用的模型,即同时突出了两种方法的模型。 GWR和面板数据分析技术的组合具有明显的益处:增加的时间尺寸放大样本量,因此包含更多程度的自由度,增加了变化的变化,变量之间的相对性较小,并提供了更高的估计效率。这项研究首次尝试使用1995年至2001年的北京地区(GBA)1995 - 2001年的短区域开发面板数据进行这种联合。与横截面GWR和面板回归相比,地理加权面板回归(GWPR)模型开发了干旱。该研究揭示了非常有前途的结果,即GWPR确实生产比横截面GWR和面板数据模型更好,更清晰的结果。这表明新方法可能会产生大量的新模式和通过纯横截面或时间序列分析无法透露的新发现。

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