Perbandingan Regressi Data Panel Dan Geographically Weighted Panel Regression Terhadap Persentase Penduduk Miskin di Jawa Timur
Abstract
This study aims to determine the comparison of the GWPR 
method with panel data regression and identify factors that affect 
the percentage of poverty in East Java Province using the GWPR 
method and panel data regression. Panel data regression uses 
Ordinary Least Square (OLS) in estimate parameters, while in 
GWPR parameter estimation use Weighted Least Square (WLS). 
First, carry out a multicollinearity test, then proceed with 
modeling panel data regression. The spatial weighting on GWPR 
model was calculated using fixed bisquare and fixed gaussian. 
The optimum weighting function is fixed bisquare which provides 
a minimum Cross Validation (CV) value of 0.01169005. The 
result showed that panel data regression produces a global 
model, while GWPR produces a local model. The local model in 
GWPR means that each regency/municipalities has a different 
model. Result of the comparison is GWPR was more accurate 
than panel regression with a good model of 0.9985947 and 
RMSE value of 0.1680463. These factor are namely 
unemployment rate, mean years of school, life expectancy, access 
to proper sanitation, non-electric lighting source, adjusted real 
per capita expenditure