Exploring the Relationship between Urban Vitality and Street Centrality Based on Social Network Review Data in Wuhan, China
Abstract
:1. Introduction
1.1. Urban Vitality
1.2. Relationship between Urban Vitality and Street Centrality
2. Materials and Methods
2.1. Study Area and Data Preparation
2.1.1. Study Area
2.1.2. Social Network Review Data
2.1.3. Centrality Assessment of Street Network
2.1.4. Convert Data into One Analysis Unit by Creating A Square Mesh
2.1.5. Control Variables
2.2. Methods
2.2.1. Exploratory Spatial Coupling Analysis
2.2.2. Spatial Regression Models
2.2.3. Geographical Detector (GD) Technique
3. Results and Discussions
3.1. Geospatial Visualization of Urban Vitality and Street Centrality
3.2. Exploratory Spatial Coupling Analysis
3.3. Results of Spatial Regression Analysis and Geographical Detector
4. Conclusions
- Urban vitality demonstrated a high level of spatial agglomeration. Most regions with high vitality coincided in position with streets;
- Different street centralities had different distribution characteristics in space. Regions with high closeness in walking mode were gathered in several isolated clusters, while regions with high closeness in driving mode presented a monocentric pattern with the downtown as the center. Regions with high straightness in walking mode were dispersed in space, while regions with high straightness in driving mode were clustered along main roads. Regions with high betweenness in walking and driving modes coincided in position with main roads;
- Spatial association between urban vitality and street centrality in different travel modes was revealed. When considering street centrality in walking mode, betweenness had the most significant impact on urban vitality, followed by closeness and straightness. When considering street centrality in driving mode, however, straightness had the most significant impact, followed by closeness and betweenness.
Author Contributions
Funding
Conflicts of Interest
Appendix A
References
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Urban Vitality | Chi-Square | Fisher’s Exact Test | |||||
---|---|---|---|---|---|---|---|
Any Hotspot? | |||||||
0 | 1 | ||||||
Street centrality (walking mode) | Closeness | Any hotspot? | 0 | 33,713 | 549 | 667.60 | p < 0.001 |
1 | 9991 | 666 | |||||
Straightness | Any hotspot? | 0 | 34,463 | 1185 | 251.07 | p < 0.001 | |
1 | 9241 | 30 | |||||
Betweenness | Any hotspot? | 0 | 37,119 | 638 | 932.75 | p < 0.001 | |
1 | 6585 | 577 | |||||
Street centrality (driving mode) | Closeness | Any hotspot? | 0 | 30,208 | 236 | 1339.06 | p < 0.001 |
1 | 13,496 | 979 | |||||
Straightness | Any hotspot? | 0 | 30,791 | 162 | 1805.19 | p < 0.001 | |
1 | 12,913 | 1053 | |||||
Betweenness | Any hotspot? | 0 | 38,225 | 742 | 724.05 | p < 0.001 | |
1 | 5479 | 473 |
Street Centrality (Walking Mode) | Street Centrality (Driving Mode) | |||||
---|---|---|---|---|---|---|
Closeness | Straightness | Betweenness | Closeness | Straightness | Betweenness | |
Spearman | 0.2401 ** | 0.1031 * | 0.4171 *** | 0.3594 *** | 0.4124 *** | 0.2861 ** |
Kendall’s tau-b | 0.1826 *** | 0.0826 ** | 0.3188 *** | 0.2733 *** | 0.3158 *** | 0.2163 *** |
Variable | Model | ||
---|---|---|---|
OLS | SLM | SEM | |
ρ (spatial lag coefficient) | - | 0.6891 *** (0.0045) | - |
λ (spatial error coefficient) | - | - | 0.7289 *** (0.0046) |
Constant | 0 (0.0037) | −0.0023 (0.0029) | −0.0033 (0.0109) |
Closeness | 0.0474 *** (0.0039) | 0.0430 *** (0.0038) | 0.0690 *** (0.0103) |
Straightness | 0.0433 *** (0.0047) | 0.0202 ** (0.0032) | 0.0285 * (0.0061) |
Betweenness | 0.0514 *** (0.0041) | 0.0796 *** (0.0033) | 0.1080 *** (0.0085) |
Gravity index of residence | 0.2646 *** (0.0044) | 0.1357 *** (0.0036) | 0.1421 *** (0.0041) |
Gravity index of workplace | 0.1682 *** (0.0040) | 0.1083 *** (0.0032) | 0.1204 *** (0.0036) |
Distance to the nearest business district | −0.0271 *** (0.0037) | −0.1479 *** (0.0045) | −0.1623 *** (0.0114) |
Distance to the nearest bus stop | −0.0816 *** (0.0034) | −0.1409 *** (0.0042) | −0.1339 *** (0.0049) |
Distance to the nearest subway station | −0.0036 ** (0.0033) | −0.0633 *** (0.0040) | −0.0622 *** (0.0089) |
Distance to the nearest school | −0.0246 ** (0.0042) | −0.0104 (0.0034) | −0.0199 * (0.0052) |
Distance to the nearest university | −0.0147 *** (0.0033) | −0.0427 *** (0.0041) | −0.0460 *** (0.0066) |
Distance to the nearest scenic spot | −0.1329 *** (0.0039) | −0.0521 *** (0.0032) | −0.0935 *** (0.0059) |
Log-likelihood | −52,482.8 | −44,812.0 | −45,008.5 |
AIC | 104,990 | 89,650.1 | 90,041.1 |
R2 | 0.3941 | 0.6059 | 0.6042 |
Robust Lagrange multiplier test | - | 15,341.4445 (p-value: 0.000) | 14,948.4297 (p-value: 0.000) |
Moran’s I of residuals | 0.3674 *** (z-score: 153.0253) | 0.0031 (z-score: 1.3278) | −0.0099 *** (z-score: −4.1226) |
Variable | Model | ||
---|---|---|---|
OLS | SLM | SEM | |
ρ (spatial lag coefficient) | - | 0.6875 *** (0.0045) | - |
λ (spatial error coefficient) | - | - | 0.7242 *** (0.0046) |
Constant | 0 (0.0037) | −0.0022 (0.0029) | −0.0033 (0.0107) |
Closeness | 0.0207 *** (0.0042) | 0.0409 *** (0.0040) | 0.0525 *** (0.0065) |
Straightness | 0.0469 *** (0.0049) | 0.0731 *** (0.0044) | 0.0869 *** (0.0094) |
Betweenness | 0.0016 (0.0036) | 0.0200 *** (0.0052) | 0.0456 *** (0.0130) |
Gravity index of residence | 0.2604 *** (0.0044) | 0.1349 *** (0.0036) | 0.1418 *** (0.0041) |
Gravity index of workplace | 0.1709 *** (0.0040) | 0.1092 *** (0.0032) | 0.1227 *** (0.0037) |
Distance to the nearest business district | −0.0181 *** (0.0040) | −0.1188 *** (0.0049) | −0.1379 *** (0.0120) |
Distance to the nearest bus stop | −0.0755 *** (0.0034) | −0.1372 *** (0.0041) | −0.1380 *** (0.0049) |
Distance to the nearest subway station | −0.0033 (0.0033) | −0.0634 *** (0.0040) | −0.0650 *** (0.0088) |
Distance to the nearest school | −0.0142 *** (0.0034) | −0.0245 *** (0.0041) | −0.0211 *** (0.0052) |
Distance to the nearest university | −0.0131 *** (0.0034) | −0.0408 *** (0.0041) | −0.0469 *** (0.0067) |
Distance to the nearest scenic spot | −0.0472 *** (0.0033) | −0.1193 *** (0.0040) | −0.0903 *** (0.0060) |
Log-likelihood | −52,450.1 | −44,871.4 | −45,089.1771 |
AIC | 104,924 | 89,768.9 | 90,202.4 |
R2 | 0.3950 | 0.6039 | 0.6030 |
Robust Lagrange multiplier test | - | 15,157.3234 (p-value: 0.000) | 14,721.8656 (p-value: 0.000) |
Moran’s I of residuals | 0.3660 *** (z-score: 152.4385) | 0.0033 (z-score: 1.3717) | −0.0090 *** (z-score: −3.7657) |
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Yue, H.; Zhu, X. Exploring the Relationship between Urban Vitality and Street Centrality Based on Social Network Review Data in Wuhan, China. Sustainability 2019, 11, 4356. https://doi.org/10.3390/su11164356
Yue H, Zhu X. Exploring the Relationship between Urban Vitality and Street Centrality Based on Social Network Review Data in Wuhan, China. Sustainability. 2019; 11(16):4356. https://doi.org/10.3390/su11164356
Chicago/Turabian StyleYue, Han, and Xinyan Zhu. 2019. "Exploring the Relationship between Urban Vitality and Street Centrality Based on Social Network Review Data in Wuhan, China" Sustainability 11, no. 16: 4356. https://doi.org/10.3390/su11164356
APA StyleYue, H., & Zhu, X. (2019). Exploring the Relationship between Urban Vitality and Street Centrality Based on Social Network Review Data in Wuhan, China. Sustainability, 11(16), 4356. https://doi.org/10.3390/su11164356