Machine Learning-Enhanced Geographically Weighted Regression for Spatial Evaluation of Human Development Index across Western Indonesia

Gustian Angga Firmansyah, Junta Zeniarja, Harun Al Azies, Sri Winarno, Syuhra Putri Ganiswari
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Abstract

The HDI (Human Development Index) is one of the important components to measure the level of success in efforts to improve the quality of human life. The human development index is built with three dimensions, namely the longevity and health dimension, the knowledge dimension and the decent standard of living dimension. The longevity and health dimension is measured using Life expectancy at birth. The knowledge dimension is measured using expected years of schooling and average years of schooling. Meanwhile, the decent standard of living dimension is measured using Adjusted per capita expenditure. This study aims to find factors that influence HDI (Human Development Index) in Western Indonesia Region using machine learning models. The results obtained are that HDI is influenced by average years of schooling, expected years of schooling, Life expectancy at birth, and Adjusted per capita expenditure which are sorted from the most significantly influential. The model used in this study is GWR (Geographically Weighted Regression) with evaluation results including, AIC of 215.3162, AICc of 226.5107, and the accuracy level in the form of R-square of 99.38% which means this model is good to use.
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机器学习增强型地理加权回归用于印度尼西亚西部人类发展指数的空间评估
人类发展指数(HDI)是衡量提高人类生活质量工作成功程度的重要组成部分之一。人类发展指数由三个维度构成,即长寿与健康维度、知识维度和体面生活水平维度。长寿与健康维度用出生时预期寿命来衡量。知识维度用预期受教育年限和平均受教育年限来衡量。同时,体面生活水平维度使用调整后的人均支出来衡量。本研究旨在利用机器学习模型找出影响印度尼西亚西部地区人类发展指数(HDI)的因素。研究结果表明,影响人类发展指数的因素包括平均受教育年限、预期受教育年限、出生时预期寿命和调整后人均支出,其中影响最大的因素排序为平均受教育年限、预期受教育年限、出生时预期寿命和调整后人均支出。本研究使用的模型是地理加权回归(GWR),其评估结果包括:AIC 为 215.3162,AICc 为 226.5107,R-square 的准确度为 99.38%,这意味着该模型可以很好地使用。
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