Prediction of population aging trend and analysis of influencing factors based on grey fractional-order and grey relational models: a case study of Jiangsu Province, China

Abstract Background With the rapid development of society, China is facing an increasingly serious problem of population aging. This trend poses new challenges to the labor force structure, public medical care construction and elderly care services, forcing the government to make a series of policy...

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Main Authors: Xiaojun Guo, Ying Wu, Yueyue Wang, Houxue Shen, Yingjie Yang, Yun Fan
Format: Article
Language:English
Published: BMC 2025-03-01
Series:BMC Geriatrics
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Online Access:https://doi.org/10.1186/s12877-025-05848-2
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author Xiaojun Guo
Ying Wu
Yueyue Wang
Houxue Shen
Yingjie Yang
Yun Fan
author_facet Xiaojun Guo
Ying Wu
Yueyue Wang
Houxue Shen
Yingjie Yang
Yun Fan
author_sort Xiaojun Guo
collection DOAJ
description Abstract Background With the rapid development of society, China is facing an increasingly serious problem of population aging. This trend poses new challenges to the labor force structure, public medical care construction and elderly care services, forcing the government to make a series of policy adjustments. Jiangsu Province, as a region with prominent aging problems in China, has a particularly significant aging phenomenon. Against the backdrop of the Chinese government's active response to the challenges of aging, this study conducts an in-depth analysis of the aging trend and its influencing factors in Jiangsu Province. Methods Based on the statistical data of the total population and the aging population in Jiangsu Province from 2011 to 2023, this study employs the grey fractional-order prediction model (FGM(1,1)) to forecast the trend of the aging population and the aging coefficient in Jiangsu Province over the next decade. Additionally, grey relational analysis (GRA) based on panel data was conducted to thoroughly examine the relevant influencing factors of population aging in Jiangsu Province. The analysis identified key factors such as general public budget expenditure, health technicians, urbanization rate, and education level as being highly correlated with population aging. Results The results of trend prediction indicate that the elderly population in Jiangsu Province is projected to continue increasing over the next decade, with the degree of aging becoming more pronounced. Additionally, GRA based on panel data reveals that factors such as general public budget expenditures and the number of health technicians significantly influence the aging process. This suggests that public financial investment and the quantity and quality of health technicians play crucial roles in shaping the aging trend. Conclusions In conjunction with the analysis results from FGM(1,1) model and GRA of panel data, this study enhances the comprehensive understanding of the aging issue in Jiangsu Province. The insights derived herein offer crucial data support and a scientific foundation for both Jiangsu Province and the Chinese government to develop policies addressing population aging. Considering the anticipated future trends in aging, it is recommended that the government revise fertility policies to optimize population structure, increase investment in public finance and medical security, and promote the development of elderly care systems. These measures aim to mitigate the challenges posed by aging and achieve sustainable economic and social development.
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spelling doaj-art-d5011adf0b8e49a0be2f8a11c81247282025-08-20T02:49:12ZengBMCBMC Geriatrics1471-23182025-03-0125112010.1186/s12877-025-05848-2Prediction of population aging trend and analysis of influencing factors based on grey fractional-order and grey relational models: a case study of Jiangsu Province, ChinaXiaojun Guo0Ying Wu1Yueyue Wang2Houxue Shen3Yingjie Yang4Yun Fan5School of Mathematics and Statistics, Nantong UniversitySchool of Mathematics and Statistics, Nantong UniversitySchool of Mathematics and Statistics, Nantong UniversitySchool of Mathematics and Statistics, Nantong UniversitySchool of Computer Science and Informatics, De Montfort UniversityNantong University Xinglin College, Nantong UniversityAbstract Background With the rapid development of society, China is facing an increasingly serious problem of population aging. This trend poses new challenges to the labor force structure, public medical care construction and elderly care services, forcing the government to make a series of policy adjustments. Jiangsu Province, as a region with prominent aging problems in China, has a particularly significant aging phenomenon. Against the backdrop of the Chinese government's active response to the challenges of aging, this study conducts an in-depth analysis of the aging trend and its influencing factors in Jiangsu Province. Methods Based on the statistical data of the total population and the aging population in Jiangsu Province from 2011 to 2023, this study employs the grey fractional-order prediction model (FGM(1,1)) to forecast the trend of the aging population and the aging coefficient in Jiangsu Province over the next decade. Additionally, grey relational analysis (GRA) based on panel data was conducted to thoroughly examine the relevant influencing factors of population aging in Jiangsu Province. The analysis identified key factors such as general public budget expenditure, health technicians, urbanization rate, and education level as being highly correlated with population aging. Results The results of trend prediction indicate that the elderly population in Jiangsu Province is projected to continue increasing over the next decade, with the degree of aging becoming more pronounced. Additionally, GRA based on panel data reveals that factors such as general public budget expenditures and the number of health technicians significantly influence the aging process. This suggests that public financial investment and the quantity and quality of health technicians play crucial roles in shaping the aging trend. Conclusions In conjunction with the analysis results from FGM(1,1) model and GRA of panel data, this study enhances the comprehensive understanding of the aging issue in Jiangsu Province. The insights derived herein offer crucial data support and a scientific foundation for both Jiangsu Province and the Chinese government to develop policies addressing population aging. Considering the anticipated future trends in aging, it is recommended that the government revise fertility policies to optimize population structure, increase investment in public finance and medical security, and promote the development of elderly care systems. These measures aim to mitigate the challenges posed by aging and achieve sustainable economic and social development.https://doi.org/10.1186/s12877-025-05848-2Population agingTrend predictionAnalysis of influencing factorsGrey fractional-order modelGrey relational analysisPanel data
spellingShingle Xiaojun Guo
Ying Wu
Yueyue Wang
Houxue Shen
Yingjie Yang
Yun Fan
Prediction of population aging trend and analysis of influencing factors based on grey fractional-order and grey relational models: a case study of Jiangsu Province, China
BMC Geriatrics
Population aging
Trend prediction
Analysis of influencing factors
Grey fractional-order model
Grey relational analysis
Panel data
title Prediction of population aging trend and analysis of influencing factors based on grey fractional-order and grey relational models: a case study of Jiangsu Province, China
title_full Prediction of population aging trend and analysis of influencing factors based on grey fractional-order and grey relational models: a case study of Jiangsu Province, China
title_fullStr Prediction of population aging trend and analysis of influencing factors based on grey fractional-order and grey relational models: a case study of Jiangsu Province, China
title_full_unstemmed Prediction of population aging trend and analysis of influencing factors based on grey fractional-order and grey relational models: a case study of Jiangsu Province, China
title_short Prediction of population aging trend and analysis of influencing factors based on grey fractional-order and grey relational models: a case study of Jiangsu Province, China
title_sort prediction of population aging trend and analysis of influencing factors based on grey fractional order and grey relational models a case study of jiangsu province china
topic Population aging
Trend prediction
Analysis of influencing factors
Grey fractional-order model
Grey relational analysis
Panel data
url https://doi.org/10.1186/s12877-025-05848-2
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