La incertidumbre en la modelación de valores del suelo de la Gran Área Metropolitana, Costa Rica

Land value patterns show very distinct spatial associations with accessibility to urban centralities and physical factors in a territory. However, predictions based on models of this structure can be highly uncertain, as the underlying data also may show clustering (thus allowing for better predicti...

全面介绍

Guardado en:
书目详细资料
Autores principales: Pérez Molina, Eduardo, Vargas Aguilar, Darío
格式: Online
语言:eng
出版: Universidad de Costa Rica 2023
主题:
在线阅读:https://revistas.ucr.ac.cr/index.php/ingenieria/article/view/56618
标签: 添加标签
没有标签, 成为第一个标记此记录!
实物特征
总结:Land value patterns show very distinct spatial associations with accessibility to urban centralities and physical factors in a territory. However, predictions based on models of this structure can be highly uncertain, as the underlying data also may show clustering (thus allowing for better predictions in more densely sampled areas). An assessment of this uncertainty for land value extrapolations in the the San José Metropolitan Region of Costa Rica is presented, via conditional Gaussian simulation, and the determinants of this uncertainty were explored, to find spatial strengths and weaknesses in the modeling efforts. The E-Type prediction from the conditional Gaussian simulation was found to marginally improve on ordinary kriging methods and it also provided explicit uncertainty patterns, which are the inverse of the land value prediction. The estimated uncertainty was found to decrease with characteristics that identify suitability for urban land use (and thus higher land values).