Research on Spatial Distribution Characteristics and Influencing Factors of Pension Resources in Shanghai Community-Life Circle
Abstract
:1. Introduction
1.1. Background
1.2. Research Framework
2. Materials and Data
2.1. Study Area
2.2. Multi-Source Data Acquisition
2.2.1. Demographic Data of the Aging Population
2.2.2. Data of the Elderly Care Facilities
2.2.3. Acquisition of Community Life Circle Data and Service Catchment Data
2.2.4. Multi-Source Data Acquisition of Influencing Factors
3. Methods
3.1. Comprehensive Evaluation on the Spatial Distribution Characteristics of Community-Based Pension Services
3.1.1. Calculating the Spatial Accessibility of Elderly Care Facilities
3.1.2. Calculating the Comprehensive Accessibility of Elderly Care Facilities
3.1.3. Analysis on Spatial Distribution Equilibrium
3.2. Analysis on Influencing Factors of Spatial Distribution Imbalance
3.2.1. Index Construction
3.2.2. Machine Learning Regression Model and Feature Screening
3.2.3. Geographically Weighted Regression Model
4. Results and Discussion
4.1. Results of Accessibility
4.2. Analysis on Imbalancd Spatial Distribution
4.2.1. Distribution of Comprehensive Accessibility
4.2.2. Distribution of Single Accessibility
- For accessibility of Type-A, there are two independent hot spots, one large and one small. The large hot spot is in Huangpu District, and the small hot spot is in the junction area of Jing’an and Changning. As a community-based elderly care facility providing medium and short-term elderly care, it mainly provides institutional residential care, rehabilitation care after serious illness discharge, breathing service and door-to-door service for the older adults. The quality of Type-A is closely related to the aging care in the community.
- For accessibility of Type-B, it has similar spatial distribution of cold and hot spots with Type-A. Such facilities provide day care services such as care and nursing, rehabilitation assistance, spiritual comfort, cultural entertainment, and travel assistance who are in need.
- For accessibility of Type-C, it has a hot spot area and several small hot spots, while Putuo and Jing’an both show many cold spots. Such facilities provide meal assistance services for older adults, meeting the needs of older adults to enjoy convenient and affordable meal assistance services.
- For accessibility of Type-D, the identified hot spots are mainly in the north of Huangpu District, and the cold spots are relatively scattered. Such facilities are community elderly care service organizations that provide door-to-door or community services for older adults.
- For accessibility of Type-E, hot spots are in Huangpu District, the junction of Putuo, Jing’an and Changning, and some areas of Yangpu District. Type-E, including nursing homes, daycare centers, meals, nursing stations, are “hub” elderly service complexes. Older adults can basically enjoy various elderly care services such as daycare, full care, meals, baths, rehabilitation, and nursing.
- For accessibility of Type-F, the biggest hot spot appears along the junctions of the six districts: Huangpu, Xuhui, Changning, Putuo, Jing’an and Hongkou. South of Huangpu District is also a hot spot. The cold spot area is mainly around the hot spot area. Similarly located at the north of Huangpu District, it is worth noting that there are hot spots of Type-F but cold spots of five other types. Such facilities are nursing stations, which provide medical care and nursing services for the elderly.
4.3. Interpretation of Random Forest Model Results
4.3.1. Interpretation of Overall Model Fitness
4.3.2. Interpretation of Feature Importance
4.4. Interpretation of Geographical Weighted Regression Results
4.4.1. Interpretation Global Performance
4.4.2. Local Spatial Heterogeneity
- For attraction density, overall, the influence of this factor on comprehensive accessibility varies greatly, reflecting obvious heterogeneity in space. The positive relationship between it and comprehensive accessibility appeared mainly in the junction of Xuhui District and Changning District, the northwest of Xuhui District and the junctions of Huangpu District, Jing’an District and Hongkou District. However, in north Huangpu, the local coefficients are negative, which means this index in Huangpu District has a bidirectional influence on comprehensive accessibility.
- For catering density, communities near the people’s Square in Huangpu District show a strong positive impact, but the surrounding area shows a negative impact, indicating that the influence of catering density on comprehensive accessibility in Huangpu District is quite different. In addition, there are also positive impacts in the west of Jing’an, the junction of Hongkou and Yangpu.
- For education density, the degree of influence is relatively significant in Huangpu District, and the degree of influence presents two directions. There is a positive impact at the junction of Huangpu District, Jing’an District, and the eastern part of Huangpu District. At the junction of Hongkou District and Yangpu District, there is a strong negative impact in the middle of Changning District.
- For building height, this factor has obvious spatial heterogeneity, which shows a strong positive impact in the southeast of Huangpu District and a strong negative impact in the north of Huangpu District. There is also a negative effect at the edge of downtown Shanghai.
- Overall, the impact is weak for hotel density in many regions, such as the north of Yangpu District and the east of Hongkou District. Strong negative and positive impacts appear in the west of Changning District.
- For accessibility of the nursing institution, as a whole, there is a circular feature, and the positive influence and negative influence are alternately distributed. With the people’s Square in Huangpu District as the center and near the people’s Square, there is a strong positive impact, and then there is a strong negative characteristic in the outward area. It is also reflected as a positive impact in Yangpu District and Hongkou District.
- For land use mix, in the overall range, the positive influence of this factor on comprehensive accessibility is distributed in a large range. It is worth noting that there is a great difference in Huangpu, and the influence degree of the north and south parts is opposite.
- For medical density, there is a strong positive impact in the east of Huangpu District, the junction of Jing’an District and Huangpu District, the west of Changning District and other places. At the same time, there is a strong negative impact in the west of Huangpu District and the east of Changning District. Besides, the impact is weak in Yangpu District and Jing’an District.
5. Conclusions
- the distribution of pension resources in the downtown of Shanghai is extremely uneven. The six single types of facilities show high scores in some areas centered on Huangpu District, and generally show the characteristics of single point center radioactivity.
- Community-based elderly care facilities in Huangpu District are mainly presented as a hot spot area, while the other six districts mainly show as cold spot agglomeration. Therefore, it is considered that the construction of pension services in these six districts needs to be strengthened.
- factors that have a great impact on the comprehensive accessibility of community elderly care facilities are as follows: accessibility of nursing institutions, hotel density, catering density, education density and medical density. Moreover, “accessibility of nursing institutions”, “hotel density” and “education density” are positively correlated with comprehensive accessibility; “medical density”; and “catering density” are negatively correlated with accessibility. However, “rents”, “plot ratio” and “building density” have little impact on comprehensive accessibility.
- The results of GWR revealed that the influence effects of eight indicators are heterogeneous in space, and the influence degree and direction of accessibility are different in different geographical locations, where there are bidirectional effects. From the perspective of seven districts, eight influencing factors have spatial heterogeneity in Huangpu District particularly.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Category | Variable | Description |
---|---|---|
Caring | Accessibility of nursing institutions | Within a 15-min walking, accessibility of elderly care institutions, such as nursing institutions, welfare homes, etc. |
Medical density | Within a 15-min walking, density of medical facilities, such as hospitals, clinics, etc | |
Morphology | Plot Ratio | Within a 15-min walking, ratio of total building area to life circle area |
Building Density | Within a 15-min walking, ratio of floor area to life circle area | |
Building height | Within a 15-min walking, average height of buildings | |
Land Use | Land use mix | Within a 15-min walking, mixed degree of land use |
Transportation | Intersection density | Within a 15-min walking, density of road intersections |
Bus Station density | Within a 15-min walking, density of bus stops, | |
Economy | Housing_price | Within a 15-min walking, average value of house prices |
Rents | Within a 15-min walking, average value of rental prices | |
Population | Residential density | Within a 15-min walking, average value of population density |
Income | Within a 15-min walking, average value of per capita income | |
Business Forms | Catering density | Within a 15-min walking, the density of catering places, such as Chinese food, Western food, teahouses, etc |
Attractions density | Within a 15-min walking, the density of scenic spots, such as parks, green spaces, scenic spots, etc | |
Factory density | Within a 15-min walking, density of sports and leisure factories. | |
Education density | Within a 15-min walking, educational and cultural density, schools, museums, etc | |
Hotel density | Within a 15-min walking, density of hotels. |
Model | R2 | RMSE | MAE |
---|---|---|---|
Comprehensive | 0.66 | 0.57 | 0.30 |
Type-A | 0.57 | 0.66 | 0.32 |
Type-B | 0.61 | 0.63 | 0.45 |
Type-C | 0.66 | 0.59 | 0.41 |
Type-D | 0.67 | 0.61 | 0.25 |
Type-E | 0.46 | 0.72 | 0.54 |
Type-F | 0.47 | 0.73 | 0.55 |
Model Diagnostics | |
---|---|
R2 | 0.8409 |
AdjR2 | 0.8364 |
AICc | 15,210.4544 |
Sigma-Squared | 0.1636 |
Sigma-Squared MLE | 0.1591 |
Effective Degrees of Freedom | 14,176.7299 |
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Huang, X.; Gong, P.; White, M.; Zhang, B. Research on Spatial Distribution Characteristics and Influencing Factors of Pension Resources in Shanghai Community-Life Circle. ISPRS Int. J. Geo-Inf. 2022, 11, 518. https://doi.org/10.3390/ijgi11100518
Huang X, Gong P, White M, Zhang B. Research on Spatial Distribution Characteristics and Influencing Factors of Pension Resources in Shanghai Community-Life Circle. ISPRS International Journal of Geo-Information. 2022; 11(10):518. https://doi.org/10.3390/ijgi11100518
Chicago/Turabian StyleHuang, Xiaoran, Pixin Gong, Marcus White, and Bo Zhang. 2022. "Research on Spatial Distribution Characteristics and Influencing Factors of Pension Resources in Shanghai Community-Life Circle" ISPRS International Journal of Geo-Information 11, no. 10: 518. https://doi.org/10.3390/ijgi11100518
APA StyleHuang, X., Gong, P., White, M., & Zhang, B. (2022). Research on Spatial Distribution Characteristics and Influencing Factors of Pension Resources in Shanghai Community-Life Circle. ISPRS International Journal of Geo-Information, 11(10), 518. https://doi.org/10.3390/ijgi11100518