空间响应曲面的梯度分析及其在城市土地价值中的应用

Gradients in Spatial Response Surfaces With Application to Urban Land Values

Journal of Business & Economic Statistics · 2005
被引 25
人大 AABS 4

中文导读

提出一种贝叶斯框架下的空间变系数回归方法,用于估计任意点与方向上的梯度,并以芝加哥土地价值数据为例,揭示城市土地价值随距离变化的梯度特征。

Abstract

For point-referenced spatial data, we often create explanatory models that introduce regression structure with error consisting of a spatial term and a white noise term. Here we consider more flexible regression structures that allow spatially varying regression coefficients. The resulting mean becomes a spatial response surface that is a linear combination of the components of the spatially varying coefficient vector. Of possible interest in this setting would be gradients associated with the coefficient surfaces as well as the mean surface. Gradients could be sought at arbitrary points and in arbitrary directions. Extending ideas developed in earlier work, we obtain a fully inferential approach within the Bayesian framework for examining such gradients. In particular, we can obtain posterior distributions for any such gradient, for the direction of maximal gradient, and for the magnitude of the maximal gradient. The motivation for our work is the desire to examine urban land value gradients. There is considerable literature in the real estate community on economic theory, modeling, and data analysis relating urban land values to distance from the city center. Here we focus on gradients to such surfaces. The flexibility of our approach allows for much richer insights into the behavior of such gradients than was available previously. We illustrate by fitting a portion of Olcott's classic Chicago land value data.

空间变系数模型贝叶斯推断梯度分析城市土地价值