Quantile Regression for Spatial Data Quantile Regression for Spatial Data
SpringerBriefs in Regional Science

Quantile Regression for Spatial Data

    • USD 59.99
    • USD 59.99

Descripción editorial

Quantile regression analysis differs from more conventional regression models in its emphasis on distributions. Whereas standard regression procedures show how the expected value of the dependent variable responds to a change in an explanatory variable, quantile regressions imply predicted changes for the entire distribution of the dependent variable.  Despite its advantages, quantile regression is still not commonly used in the analysis of spatial data. The objective of this book is to make quantile regression procedures more accessible for researchers working with spatial data sets. The emphasis is on interpretation of quantile regression results. A series of examples using both simulated and actual data sets shows how readily seemingly complex quantile regression results can be interpreted with sets of well-constructed graphs.  Both parametric and nonparametric versions of spatial models are considered in detail.

GÉNERO
Negocios y finanzas personales
PUBLICADO
2012
1 de agosto
IDIOMA
EN
Inglés
EXTENSIÓN
75
Páginas
EDITORIAL
Springer Berlin Heidelberg
VENDEDOR
Springer Nature B.V.
TAMAÑO
1.9
MB
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