GEOGRAPHICALLY WEIGHTED PANEL REGRESSION MODELING OF POVERTY RATES IN TROPICAL RAINFOREST AREAS OF KALIMANTAN

When applied to spatial panel data, the Geographically Weighted Panel Regression (GWPR) model is a localized version of the linear regression model. The Fixed Effect Model (FEM) inside estimator is used as a global model in this investigation. The purpose of this research is to obtain a GWPR model a...

Full description

Saved in:
Bibliographic Details
Main Authors: Ghina Fadhilla Mumtaz, Suyitno Suyitno, Sifriyani Sifriyani
Format: Article
Language:English
Published: Universitas Pattimura 2025-04-01
Series:Barekeng
Subjects:
Online Access:https://ojs3.unpatti.ac.id/index.php/barekeng/article/view/14797
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849389560099766272
author Ghina Fadhilla Mumtaz
Suyitno Suyitno
Sifriyani Sifriyani
author_facet Ghina Fadhilla Mumtaz
Suyitno Suyitno
Sifriyani Sifriyani
author_sort Ghina Fadhilla Mumtaz
collection DOAJ
description When applied to spatial panel data, the Geographically Weighted Panel Regression (GWPR) model is a localized version of the linear regression model. The Fixed Effect Model (FEM) inside estimator is used as a global model in this investigation. The purpose of this research is to obtain a GWPR model and identify the variables that affect the proportion of the impoverished in 56 districts and cities located in Kalimantan's humid tropical forest region between 2019 and 2022. The Weighted Least Square (WLS) approach, which provides geographic weighting in addition to the Least Square method, is used for estimating the parameters of the GWPR model. The optimal weighting function chosen from the adaptive bisquare, adaptive tricube, and adaptive gaussian weightings is the spatial weighting function used in the GWPR model estimate in this work. For determining the ideal bandwidth, the Cross Validation (CV) criterion is applied. According to the study's findings, the optimal weighting function is adaptive gaussian, which yields the best GWPR model with a CV of 8.8740 at the lowest. The GWPR model parameters were tested, and the results showed that both local and global influences affect the percentage of the population living in poverty. The gross domestic product (GDP), the open unemployment rate, the average length of education, the number of workers, and life expectancy are local factors that affect the percentage of the poor; on the other hand, the number of workers is a global factor that affects the percentage of the poor.
format Article
id doaj-art-1be15fcf8a304dd4bd292f14f27f8eee
institution Kabale University
issn 1978-7227
2615-3017
language English
publishDate 2025-04-01
publisher Universitas Pattimura
record_format Article
series Barekeng
spelling doaj-art-1be15fcf8a304dd4bd292f14f27f8eee2025-08-20T03:41:56ZengUniversitas PattimuraBarekeng1978-72272615-30172025-04-0119290391610.30598/barekengvol19iss2pp903-91614797GEOGRAPHICALLY WEIGHTED PANEL REGRESSION MODELING OF POVERTY RATES IN TROPICAL RAINFOREST AREAS OF KALIMANTANGhina Fadhilla Mumtaz0Suyitno Suyitno1Sifriyani Sifriyani2Department of Mathematics, Faculty of Mathematics and Natural Sciences, Universitas Mulawarman, IndonesiaDepartment of Mathematics, Faculty of Mathematics and Natural Sciences, Universitas Mulawarman, IndonesiaDepartment of Mathematics, Faculty of Mathematics and Natural Sciences, Universitas Mulawarman, IndonesiaWhen applied to spatial panel data, the Geographically Weighted Panel Regression (GWPR) model is a localized version of the linear regression model. The Fixed Effect Model (FEM) inside estimator is used as a global model in this investigation. The purpose of this research is to obtain a GWPR model and identify the variables that affect the proportion of the impoverished in 56 districts and cities located in Kalimantan's humid tropical forest region between 2019 and 2022. The Weighted Least Square (WLS) approach, which provides geographic weighting in addition to the Least Square method, is used for estimating the parameters of the GWPR model. The optimal weighting function chosen from the adaptive bisquare, adaptive tricube, and adaptive gaussian weightings is the spatial weighting function used in the GWPR model estimate in this work. For determining the ideal bandwidth, the Cross Validation (CV) criterion is applied. According to the study's findings, the optimal weighting function is adaptive gaussian, which yields the best GWPR model with a CV of 8.8740 at the lowest. The GWPR model parameters were tested, and the results showed that both local and global influences affect the percentage of the population living in poverty. The gross domestic product (GDP), the open unemployment rate, the average length of education, the number of workers, and life expectancy are local factors that affect the percentage of the poor; on the other hand, the number of workers is a global factor that affects the percentage of the poor.https://ojs3.unpatti.ac.id/index.php/barekeng/article/view/14797cross validationgwprpovertyweighteing function
spellingShingle Ghina Fadhilla Mumtaz
Suyitno Suyitno
Sifriyani Sifriyani
GEOGRAPHICALLY WEIGHTED PANEL REGRESSION MODELING OF POVERTY RATES IN TROPICAL RAINFOREST AREAS OF KALIMANTAN
Barekeng
cross validation
gwpr
poverty
weighteing function
title GEOGRAPHICALLY WEIGHTED PANEL REGRESSION MODELING OF POVERTY RATES IN TROPICAL RAINFOREST AREAS OF KALIMANTAN
title_full GEOGRAPHICALLY WEIGHTED PANEL REGRESSION MODELING OF POVERTY RATES IN TROPICAL RAINFOREST AREAS OF KALIMANTAN
title_fullStr GEOGRAPHICALLY WEIGHTED PANEL REGRESSION MODELING OF POVERTY RATES IN TROPICAL RAINFOREST AREAS OF KALIMANTAN
title_full_unstemmed GEOGRAPHICALLY WEIGHTED PANEL REGRESSION MODELING OF POVERTY RATES IN TROPICAL RAINFOREST AREAS OF KALIMANTAN
title_short GEOGRAPHICALLY WEIGHTED PANEL REGRESSION MODELING OF POVERTY RATES IN TROPICAL RAINFOREST AREAS OF KALIMANTAN
title_sort geographically weighted panel regression modeling of poverty rates in tropical rainforest areas of kalimantan
topic cross validation
gwpr
poverty
weighteing function
url https://ojs3.unpatti.ac.id/index.php/barekeng/article/view/14797
work_keys_str_mv AT ghinafadhillamumtaz geographicallyweightedpanelregressionmodelingofpovertyratesintropicalrainforestareasofkalimantan
AT suyitnosuyitno geographicallyweightedpanelregressionmodelingofpovertyratesintropicalrainforestareasofkalimantan
AT sifriyanisifriyani geographicallyweightedpanelregressionmodelingofpovertyratesintropicalrainforestareasofkalimantan