Exploration of Spatio-Temporal Evolution and Threshold Effect of Shrinking Cities
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Methods
2.2.1. Ordinary Panel Regression Model
2.2.2. Panel Threshold Regression Model
2.3. Variable Selection and Source
- (1)
- Explained variables: Population size is a crucial indicator for measuring shrinking cities and a key element in characterizing urban development [44]. Thus, population size is chosen as the dependent variable in this study. To ensure the continuity and stability of population data, the study utilizes modified Worldpop population grid data with a resolution of 100 m from 2001 to 2020. This data is the constraint for identifying shrinking cities, allowing for population size analysis based on county-level administrative units.
- (2)
- Explanatory variables: This study primarily selects explanatory variables from three dimensions—economy, investment, and nature—that may influence the formation or development of shrinking cities.
2.4. Identification of Shrinking Cities
3. Results
3.1. Analysis of Time Evolution of Shrinking Cities
3.2. Study on the Spatial Distribution of Shrinking Cities
3.3. Panel Regression Model Analysis of Influencing Factors on Shrinking Cities
3.4. Threshold Effects and Regression Analysis of Influencing Factors on Shrinking Cities
3.4.1. Results of Threshold Effect Testing on Shrinking Cities
3.4.2. Regression Analysis of Influencing Factors on Shrinking Cities
4. Discussions
4.1. The Importance of Identification of Shrinking Cities
4.2. Possible Influencing Factors of Shrinking Cities
4.3. Urban Plannings to Tackle Shrinking Cities
4.4. The Limitations and Future Research Directions
5. Conclusions
- (1)
- There are numerous and relatively severe shrinking cities in the Three Northeastern Provinces of China. Using a two-step identification method, the study identifies 83 stable shrinking cities and 125 stable growing cities, with the remaining cities leaning toward shrinkage. Regarding spatial distribution, most cities in the “Harbin-Dalian” urban corridor exhibit a strong growth trend and are classified as stable growing cities. On the other hand, the shrinking cities are mainly located at the northern and southern ends, centered around areas such as Yimei District and Mishan City, forming six spatial clusters.
- (2)
- The fixed effects model exhibits a better fit compared to other panel regression models. The results indicate significant relationships with population size between OVSI, OVTI, FE, GRA, IMP, IFA, and LST. The first five factors positively impact population size, while IMP, GAR, and OVTI exhibit the most potent promoting effects.
- (3)
- The dual-threshold model outperforms other threshold models in terms of fit. The results reveal a significant causal relationship between GDP, which serves as a critical indicator of urban development, and the formation of shrinking cities and changes in population size. Under the influence of population dynamics, this relationship exhibits a significant non-linear pattern. When GDP is below the first threshold value (CNY 434,832), it demonstrates an inhibitory effect, suggesting that cities with smaller economic scale face limited external attractiveness and struggle to generate substantial attraction. When GDP falls within the range between the first and second threshold (CNY 434,832 to CNY 2,270,731 yuan), the significant effects become unclear due to the complexity inherent in this interval. However, once GDP surpasses the second threshold (CNY 2,270,731), there is a powerful promoting effect on population changes, indicating the presence of strong “self-renewal” and “suction” capacities in such cities.
- (4)
- The results of the dual-threshold regression model and grouped models show significant differences in the direction and strength of the explanatory variables in different models. The variables in the economic and investment dimensions show good significance. OVSI and OVTI promote in the threshold regression model, while they inhibit in Type III cities. IFA and FR mainly exhibit significant promotion in Type II and Type I cities, with only IFA showing inhibition in Type I cities. IMP and FR show significant promotion in the threshold regression model, and in Type II and Type I cities, further indicating the promoting role of urbanization and government investment in the development of medium and large cities. The significance of the indicators in the natural dimension is relatively weak. Only LST shows significant inhibition in Type I cities, while FOR shows significant promotion in Type I cities. Overall, the differences are most pronounced in Type III cities, which are smaller in scale. The study demonstrates that shrinking cities are indeed influenced by urban scale. Due to their unique urban scale, urban characteristics, and development backgrounds, smaller cities are more prone to become shrinking cities.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Dimensions | Variables | Data Sources | Mean | Std.Dev. | Correlation |
---|---|---|---|---|---|
Predicted Variable | Population(POP) | Worldpop | 424,317.9 (person) | 265,204.3 | - |
Economic Dimension | Gross Domestic Product(GDP) | China County Statistical Yearbook | 1247.8 (million CNY) | 1663.7 | 0.55 *** |
Output Value of the Secondary Industry(OVSI) | China County Statistical Yearbook | 510.5 (million CNY) | 907.2 | 0.49 *** | |
Output Value of the Tertiary Industry(OVTI) | China County Statistical Yearbook | 536.1 (million CNY) | 903.4 | 0.41 *** | |
Impervious Areas(IMP) | China Land Cover Dataset [55] | 160,757.1 (hm2) | 136.7 | 0.50 *** | |
Investment Dimension | Investment in Fixed Assets(IFA) | China County Statistical Yearbook | 684.0 (million CNY) | 1175.8 | 0.38 *** |
Fiscal Revenue(FR) | China County Statistical Yearbook | 77.1 (million CNY) | 191.6 | 0.33 *** | |
Fiscal Expenditure(FE) | China County Statistical Yearbook | 166.2 (million CNY) | 186.9 | 0.43 *** | |
Natural Dimension | Mean Annual Land Surface Temperature(LST) | MODIS/006/MOD11A1 | 13.2 (°C) | 3.92 | 0.23 *** |
Forest Areas(FOR) | China Land Cover Dataset [55] | 1,803,012 (hm2) | 3,763,292 | −0.20 *** | |
Grass Areas(GRA) | China Land Cover Dataset [55] | 113,688.4 (hm2) | 286,685.5 | 0.04 ** |
Assignment | −2 | −1 | 0 | 1 | 2 |
---|---|---|---|---|---|
Criteria | 16 ≤ n | 13 ≤ n < 16 | 9 ≤ n < 13 | 4 ≤ n < 9 | 0 ≤ n < 4 |
−0.20 ≤ r < −0.10 | −0.10 ≤ r < −0.05 | −0.05 ≤ r < 0 | 0 ≤ r < 0.15 | 0.15 ≤ r |
Rate | −2 | −1 | 0 | 1 | 2 | Total | |
---|---|---|---|---|---|---|---|
Number | |||||||
2 | 0 | 0 | 0 | 40 | 56 | 96 | |
1 | 0 | 0 | 1 | 26 | 3 | 30 | |
0 | 2 | 2 | 28 | 16 | 0 | 48 | |
−1 | 16 | 12 | 17 | 1 | 0 | 46 | |
−2 | 36 | 19 | 6 | 0 | 0 | 61 | |
Total | 54 | 33 | 52 | 83 | 59 | 281 |
Variables | Ordinary Linear Regression Model | Random Effects Model | Fixed Effects Model | |
---|---|---|---|---|
Economic Dimension | GDP | 0.91 *** | −0.01 | 0.003 |
(8.59) | (−0.25) | (0.26) | ||
OVSI | −0.23 *** | 0.03 | 0.02 ** | |
(−3.66) | (0.76) | (2.31) | ||
OVTI | −0.24 *** | 0.04 | 0.04 *** | |
(−4.06) | (1.53) | (6.05) | ||
IMP | 0.34 *** | 0.09 ** | 0.10 *** | |
(19.28) | (2.14) | (11.04) | ||
Investment Dimension | IFA | −0.06 *** | −0.01 | −0.004 ** |
(−3.24) | (−0.90) | (−2.41) | ||
FR | −0.16 *** | 0.01 | 0.002 | |
(−6.67) | (1.44) | (1.22) | ||
FE | 0.07 *** | 0.003 | 0.01 *** | |
(3.23) | (0.35) | (4.4) | ||
Natural Dimension | LST | 0.07 *** | −0.002 | −0.01 *** |
(4.65) | (−1.14) | (−3.68) | ||
FOR | −0.07 *** | −0.07 | −0.04 | |
(−5.55) | (−0.74) | (−0.73) | ||
GRA | −0.13 *** | 0.06 *** | 0.06 *** | |
(−8.62) | (2.96) | (10.38) | ||
Constants | −0.02 | 0.00007 | 0.02 *** | |
(−1.36) | (0) | (3.82) | ||
R2 | 0.45 | 0.38 | - | |
Adj.R2 | 0.45 | 0.45 | 0.34 | |
Pseudo R2 | - | −0.237 | - | |
AIC | 8808.38 | −9264.15 | −11,312.33 | |
BIC | 8877.38 | −9182.61 | −11,130.44 |
Model | Bootstrap Replications | RSS | MSE | F-Value | p-Value | Critical Value | ||
---|---|---|---|---|---|---|---|---|
10% | 5% | 1% | ||||||
Single Threshold | 300 | 11.43 | 0 | 518.21 | 0 | 23.90 | 34.58 | 49.48 |
Double thresholds | 300 | 10.64 | 0 | 289.09 | 0 | 25.59 | 30.23 | 37.48 |
Triple Thresholds | 300 | 10.13 | 0 | 194.70 | 0.69 | 313.15 | 335.14 | 388.76 |
Model | Estimated Value | Lower Limit | Upper Limit | Non Normalized Estimated Value (yuan) |
---|---|---|---|---|
Single Threshold Value | 0.61 | 0.58 | 0.64 | 2270 731 |
Double Threshold Value | −0.49 | −0.49 | −0.49 | 434 832 |
0.61 | 0.58 | 0.64 | 2270 731 |
Variables | Double Threshold Model (Full Sample) | Type III Cities | Type II Cities | Type I Cities | ||
---|---|---|---|---|---|---|
Economic Dimension | GDP | 0.16 *** | −0.08 *** | 0.04 ** | ||
(4.53) | (−4.87) | (2.15) | ||||
GDP < 434,832 | −3.43 *** | |||||
(−15.31) | ||||||
434,832 < GDP ≤ 2,270,731 | 0.24 | |||||
(0.4) | ||||||
2,270,731 < GDP | 3.77 *** | |||||
(18.59) | ||||||
OVSI | 0.01 *** | −0.13 *** | −0.003 | −0.01 | ||
(3.34) | (−5.36) | (−0.27) | (−0.67) | |||
OVTI | 0.03 *** | −0.15 *** | 0.13 *** | −0.01 | ||
(16.43) | (−7.13) | (14.28) | (−0.77) | |||
IMP | 0.07 *** | 0.01 | 0.15 *** | 0.24 *** | ||
(9.21) | (1.52) | (9.58) | (8.12) | |||
Investment Dimension | IFA | −0.01 *** | −0.01 | 0.02 *** | −0.01 *** | |
(−5.89) | (−1.22) | 6.09 | (−4.90) | |||
FR | 0.01 *** | 0.0002 | 0.01 ** | 0.01 *** | ||
(4.86) | (0.09) | (1.98) | (3.23) | |||
FE | 0.01 ** | 0.02 *** | −0.01 *** | −0.02 *** | ||
(2.32) | (3.86) | (−3.08) | (−3.11) | |||
Natural Dimension | LST | 0 | 0.002 | −0.01 *** | −0.01 | |
(0.37) | (1.52) | (−2.65) | (−1.31) | |||
FOR | 0.04 | 0.04 | −0.07 | 1.04 ** | ||
(0.82) | (1.34) | (−0.83) | (2.56) | |||
GRA | 0.05 *** | 0.03 *** | 0.06 *** | 0.06 * | ||
(9.13) | (5.79) | (8.03) | (1.76) | |||
Constants | −0.01 *** | −0.59 *** | −0.03 *** | 1.40 *** | ||
(−6.57) | (−44.86) | (−3.24) | (9.84) | |||
N | 3914 | 1194 | 2159 | 561 | ||
R2 | 0.47 | 0.20 | 0.33 | 0.73 | ||
Adj. R2 | 0.44 | 0.05 | 0.25 | 0.67 | ||
AIC | −11,988.76 | −6705.3 | −7770.41 | −1822.45 | ||
BIC | −11,907.22 | −6557.83 | −7605.76 | −1705.55 |
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Song, Y.; He, W.; Zeng, J. Exploration of Spatio-Temporal Evolution and Threshold Effect of Shrinking Cities. Land 2023, 12, 1474. https://doi.org/10.3390/land12071474
Song Y, He W, Zeng J. Exploration of Spatio-Temporal Evolution and Threshold Effect of Shrinking Cities. Land. 2023; 12(7):1474. https://doi.org/10.3390/land12071474
Chicago/Turabian StyleSong, Yuanzhen, Weijie He, and Jian Zeng. 2023. "Exploration of Spatio-Temporal Evolution and Threshold Effect of Shrinking Cities" Land 12, no. 7: 1474. https://doi.org/10.3390/land12071474
APA StyleSong, Y., He, W., & Zeng, J. (2023). Exploration of Spatio-Temporal Evolution and Threshold Effect of Shrinking Cities. Land, 12(7), 1474. https://doi.org/10.3390/land12071474