Affiliation:
1. Instituto de Economía Aplicada Litoral (IECAL‐FCE) Universidad Nacional del Litoral and CONICET Santa Fe Argentina
2. Facultad de Ingeniería Química Universidad Nacional del Litoral and CONICET Santa Fe Argentina
Abstract
AbstractWe introduce five nonparametric kriging‐type predictors for spatial data where only the variable of interest, without covariates, is recorded. The proposed methods seek to fully exploit the information contained in the spatial closeness and also in the similarity between neighbourhoods of the variable of interest. This is managed using different combinations of kernels (one or two kernels), and different combinations of distances (multiplicative and additive). The good performance of the proposed methods is shown via simulation studies and housing price prediction applications.
Funder
Agencia Nacional de Promoción Científica y Tecnológica
Subject
Environmental Science (miscellaneous),Geography, Planning and Development