Abstract

Geographically weighted regression (GWR) is a spatial data analysis method where spatially varying relationships are explored between explanatory variables and a response variable. One unresolved problem with spatially varying coefficient regression models is local collinearity in weighted explanatory variables. The consequence of local collinearity is: estimation of GWR coefficients is possible but their standard errors tend to be large. As a result, the population values of the coefficients cannot be estimated with great precision or accuracy. In this paper, we propose a recently developed method to remediate the collinearity effects in GWR models using the Locally Compensated Ridge Geographically Weighted Regression (LCR-GWR). Our focus in this study was on reviewing the estimation parameters of LCR-GWR model. And also discussed an appropriate statistic for testing significance of parameters in the model. The result showed that Parameter estimation of LCR-GWR model using weighted least square method is \(\hat{\beta }({u}_{i},{v}_{i},{\lambda }_{i})={[{X}^{\ast T}W* ({u}_{i},{v}_{i}){X}^{\ast }+\lambda I({u}_{i},{v}_{i})]}^{-1}{X}^{\ast T}W* ({u}_{i},{v}_{i}){y}^{\ast }\), where the ridge parameter, λ, varies across space. The LCR-GWR is not necessarily calibrates the ridge regressions everywhere; only at locations where collinearity is likely to be an issue. And the parameter significance test using t-test, t = \(t=\frac{{\hat{\beta }}_{k}({u}_{i},{v}_{i},{\lambda }_{i})}{\hat{\sigma }\sqrt{{v}_{kk}}}\).

Details

Title
Parameter Estimation of Locally Compensated Ridge-Geographically Weighted Regression Model
Author
Fadliana, Alfi 1 ; Pramoedyo, Henny 2 ; Rahma Fitriani 2 

 Statistics Master Study Program, Department of Statistics, Faculty of Mathematics and Natural Sciences, Brawijaya University, Malang, East Java, Indonesia 
 Department of Statistics, Faculty of Mathematics and Natural Sciences, Brawijaya University, Malang, East Java, Indonesia 
Publication year
2019
Publication date
Jun 2019
Publisher
IOP Publishing
ISSN
17578981
e-ISSN
1757899X
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2561094199
Copyright
© 2019. This work is published under http://creativecommons.org/licenses/by/3.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.