利用机器学习驱动的高斯技术建立印度尼西亚东部地区人类发展指数的数据驱动模型

Syuhra Putri Ganiswari, Harun Al Azies, Adhitya Nugraha, Ardytha Luthfiarta, Gustian Angga Firmansyah
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摘要

人类发展指数(HDI)是用于衡量和评估一个国家人类生活进步和质量的统计指标。对印尼政府而言,人类发展指数非常重要,因为它可用于创建或制定有效的政策和计划。此外,人类发展指数还被用作确定总拨款基金的分配因素之一。印尼统计局发布的2022年人类发展指数数据显示,在过去12年中,包括印尼东部地区在内的每个地区/城市的人类发展指数都在上升。人类发展指数值的高低受多种因素影响,有迹象表明存在空间多样性,周边地区的人类发展指数水平往往与该地区相差不远。本研究采用了地理加权回归法,因为该方法考虑到了空间因素。但是,如果出现区域扩张,则必须重复建立 GWR 模型。因此,需要一个应用机器学习方法的 GWR 模型,使用不同的数据集(即训练数据和测试数据)来建立和测试该模型,以便该模型能够更好地预测新数据。根据线性回归模型得出的结果,印尼东部地区对人类发展指数影响最大的因素是预期受教育年限(X2)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Modeling of Human Development Index in Eastern Indonesia's Region Using Gaussian Techniques Empowered by Machine Learning
The Human Development Index (HDI) is a statistical measure used to measure and evaluate the progress and quality of human life in a country. For the Government of Indonesia, HDI is important because it is used to create or develop effective policies and programs. In addition, HDI is also used as one of the allocators in determining the General Allocation Fund. The 2022 HDI data released by BPS shows that there has been an increase in the HDI in each district/city over the last 12 years, including in the regions of Eastern Indonesia. High and low HDI values are influenced by several factors, and there are indications that there is spatial diversity where surrounding areas tend to have HDI levels that are not far from the area. The Geographically Weighted Regression method is used in this study because it takes into account spatial aspects. However, the GWR model must be built repeatedly if there is regional expansion. Therefore, a GWR model that applies machine learning methods is needed where the model is built and tested using different datasets, namely training data and test data, so that the model can predict new data better. The results obtained are that the GWR model with test data has a better R-Square value when compared to the GWR model previously trained using training data, which is 0.9946702, based on the linear regression model shows the results that the most influential factor on HDI in Eastern Indonesia is expected years of schooling (X2).
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