Determinants of Regional Economic Resilience to Economic Crisis: Evidence from Chinese Economies
Abstract
:1. Introduction
2. Methods
2.1. Data
2.2. Resilience and Its Determinants
2.3. Resilience Indicator
2.4. Determinants of Regional Economic Resilience
2.5. Analytical Methods
Yij = 0, if RN < 0.
Log (pij/(1 − pij)) = γ00 + u0j,
β0j = γ00 + γij + u0j,
3. Results and Discussion
3.1. National- and Province-Based Regional Economic Resilience
3.2. Determinants of Regional Economic Resilience
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Appendix A.1. National- and Province-Based Regional Economic Resilience
Cityid | City | Province | RN | RP |
---|---|---|---|---|
1 | Beijing | Beijing | −0.11109 | |
2 | Tianjin | Tianjin | −0.5843 | |
3 | Shijiazhuang | Hebei | −0.25677 | 1.463781 |
4 | Tangshan | Hebei | −0.87254 | −0.57746 |
5 | Qinghuangdao | Hebei | −0.45149 | 0.818291 |
6 | Handan | Hebei | −0.95008 | −0.83451 |
7 | Xingtai | Hebei | −1.54113 | −2.79384 |
8 | Baoding | Hebei | −0.2054 | 1.634082 |
9 | Zhangjiakou | Hebei | −0.66689 | 0.104271 |
10 | Chengde | Hebei | −0.32209 | 1.24727 |
11 | Cangzhou | Hebei | −0.93111 | −0.77162 |
12 | Langfang | Hebei | −0.69289 | 0.018063 |
13 | Hengshui | Hebei | −0.88639 | −0.62338 |
14 | Taiyuan | Shanxi | 0.146482 | 1.404865 |
15 | Datong | Shanxi | −1.48236 | −2.01179 |
16 | Yangquan | Shanxi | −0.51664 | 0.013896 |
17 | Changzhi | Shanxi | 0.162884 | 1.43927 |
18 | Jincheng | Shanxi | 0.028696 | 1.157797 |
19 | Suzhou | Shanxi | 0.222703 | 1.564746 |
20 | Jinzhong | Shanxi | 0.098738 | 1.304717 |
21 | Yuncheng | Shanxi | −0.96673 | −0.9302 |
22 | Yizhou | Shanxi | −1.31885 | −1.66882 |
23 | Linfen | Shanxi | −0.37607 | 0.308768 |
24 | Lvliang | Shanxi | −1.50201 | −2.05301 |
25 | Huhehaote | Inner Mongolia | 0.647102 | 0.792586 |
26 | Baotou | Inner Mongolia | −0.36959 | −0.31391 |
27 | Wuhai | Inner Mongolia | −0.32789 | −0.26852 |
28 | Chifeng | Inner Mongolia | −0.34386 | −0.28591 |
29 | Tongliao | Inner Mongolia | −0.03096 | 0.054636 |
30 | Erdors | Inner Mongolia | 1.352074 | 1.559825 |
31 | Hailaer | Inner Mongolia | −0.46514 | −0.4179 |
32 | Bayanzhuoer | Inner Mongolia | −0.04704 | 0.037131 |
33 | Wulanchade | Inner Mongolia | −0.78522 | −0.76625 |
34 | Shenyang | Liaoning | 0.122288 | 1.644333 |
35 | Dalian | Liaoning | −0.94366 | −0.86726 |
36 | Anshan | Liaoning | −0.26315 | 0.736152 |
37 | Fushun | Liaoning | −1.23556 | −1.55503 |
38 | Benxi | Liaoning | −0.5994 | −0.05611 |
39 | Dandong | Liaoning | −0.9087 | −0.78487 |
40 | Jinzhou | Liaoning | −0.631 | −0.13056 |
41 | Yingkou | Liaoning | −0.5708 | 0.011278 |
42 | Fuxin | Liaoning | −0.86719 | −0.68706 |
43 | Liaoyang | Liaoning | −0.83911 | −0.62092 |
44 | Panjin | Liaoning | −1.13943 | −1.32853 |
45 | Tieling | Liaoning | −0.43092 | 0.340866 |
46 | Zhaoyang | Liaoning | −0.02319 | 1.301552 |
47 | Huludao | Liaoning | 0.177666 | 1.774813 |
48 | Changchun | Jilin | 0.288544 | 0.521485 |
49 | Jilin | Jilin | −0.32835 | −0.20693 |
50 | Siping | Jilin | −0.85818 | −0.83254 |
51 | Liaoyuan | Jilin | −0.77109 | −0.72971 |
52 | Tonghua | Jilin | −0.89205 | −0.87253 |
53 | Baishan | Jilin | −0.0421 | 0.131073 |
54 | Songyuan | Jilin | 0.482841 | 0.750907 |
55 | Baicheng | Jilin | −0.46179 | −0.3645 |
56 | Haerbin | Heilongjiang | −1.57353 | −3.63828 |
57 | Qiqihaer | Heilongjiang | −0.61837 | 0.755532 |
58 | Jixi | Heilongjiang | −1.63553 | −3.9235 |
59 | Hegang | Heilongjiang | −1.74667 | −4.43474 |
60 | Shuangyashan | Heilongjiang | −1.59252 | −3.72567 |
61 | Daqing | Heilongjiang | −1.4787 | −3.20207 |
62 | Yichun | Heilongjiang | −1.05992 | −1.27564 |
63 | Jiamusi | Heilongjiang | −1.00658 | −1.03028 |
64 | Qitaihe | Heilongjiang | −0.81709 | −0.15858 |
65 | Mudanjiang | Heilongjiang | −0.03457 | 3.44108 |
66 | Heihe | Heilongjiang | −1.46661 | −3.14645 |
67 | Neihua | Heilongjiang | −0.27408 | 2.339288 |
68 | Shanghai | Shanghai | 0.300459 | |
69 | Nanjing | Jiangsu | 1.564261 | 0.412132 |
70 | Wuxi | Jiangsu | 0.565437 | −0.13792 |
71 | Xuzhou | Jiangsu | 0.461362 | −0.19523 |
72 | Changzhou | Jiangsu | 0.301605 | −0.28321 |
73 | Suzhou | Jiangsu | 1.373144 | 0.306884 |
74 | Nantong | Jiangsu | 1.796283 | 0.539905 |
75 | Lianyungang | Jiangsu | 0.206234 | −0.33573 |
76 | Huaian | Jiangsu | −0.12028 | −0.51554 |
77 | Yancheng | Jiangsu | 0.164331 | −0.35881 |
78 | Yangzhou | Jiangsu | 0.445947 | −0.20372 |
79 | Zhenjiang | Jiangsu | 1.006741 | 0.105107 |
80 | Taizhou | Jiangsu | 0.720402 | −0.05258 |
81 | Suqian | Jiangsu | −0.00178 | −0.45028 |
82 | Hangzhou | Zhejiang | 0.757783 | 0.657364 |
83 | Ningbo | Zhejiang | −1.44516 | −1.41973 |
84 | Wenzhou | Zhejiang | 0.226893 | 0.156803 |
85 | Jiaxing | Zhejiang | −1.41941 | −1.39545 |
86 | Huzhou | Zhejiang | 1.11746 | 0.996493 |
87 | Shaoxing | Zhejiang | 0.195993 | 0.127668 |
88 | Jinhua | Zhejiang | 1.326105 | 1.193218 |
89 | Quzhou | Zhejiang | 0.925476 | 0.815477 |
90 | Zhoushan | Zhejiang | −0.19715 | −0.24302 |
91 | Taizhou | Zhejiang | 0.404764 | 0.324512 |
92 | Lishui | Zhejiang | −1.51561 | −1.48615 |
93 | Hefei | Anhui | 1.08804 | 0.304413 |
94 | Wuhu | Anhui | 0.701984 | 0.063241 |
95 | Bengbu | Anhui | −0.58168 | −0.73868 |
96 | Huainan | Anhui | −0.46929 | −0.66846 |
97 | Maanshan | Anhui | 0.705013 | 0.065134 |
98 | Huaibei | Anhui | −0.58149 | −0.73855 |
99 | Tongling | Anhui | −0.12867 | −0.45568 |
100 | Anqing | Anhui | 0.476086 | −0.07788 |
101 | Huangshan | Anhui | 1.070805 | 0.293646 |
102 | Chuzhou | Anhui | −0.10749 | −0.44244 |
103 | Fuyang | Anhui | 0.954113 | 0.220748 |
104 | Suzhou | Anhui | 0.890161 | 0.180797 |
105 | Liuan | Anhui | 5.268123 | 2.915741 |
106 | Haozhou | Anhui | 2.342163 | 1.087873 |
107 | Chizhou | Anhui | −1.57333 | −1.35817 |
108 | Xuancheng | Anhui | 0.761145 | 0.1002 |
109 | Fuzhou | Fujian | 0.8043 | −0.01145 |
110 | Xiamen | Fujian | 1.498696 | 0.369002 |
111 | Putian | Fujian | 2.597335 | 0.970932 |
112 | Sanming | Fujian | 0.552555 | −0.14938 |
113 | Quanzhou | Fujian | −0.00554 | −0.45515 |
114 | Zhangzhou | Fujian | 0.932425 | 0.05875 |
115 | Nanping | Fujian | 0.586125 | −0.13098 |
116 | Longyan | Fujian | −0.10543 | −0.50988 |
117 | Ningde | Fujian | 1.875216 | 0.575293 |
118 | Nanchang | Jiangxi | 0.547259 | 0.215881 |
119 | Jingdezhen | Jiangxi | −0.307 | −0.45542 |
120 | Pingxiang | Jiangxi | −0.40354 | −0.53129 |
121 | Jiujiang | Jiangxi | −0.0971 | −0.29048 |
122 | Xinyu | Jiangxi | −1.07151 | −1.0562 |
123 | Yingtan | Jiangxi | 0.72118 | 0.352553 |
124 | Ganzhou | Jiangxi | 0.825614 | 0.434621 |
125 | Jian | Jiangxi | −0.56886 | −0.6612 |
126 | Yichun | Jiangxi | 1.462779 | 0.935323 |
127 | Fuzhou | Jiangxi | −0.00998 | −0.22202 |
128 | Shangrao | Jiangxi | 0.225931 | −0.03663 |
129 | Jinan | Shandong | −0.66993 | −0.38758 |
130 | Qingdao | Shandong | −1.43154 | −1.80071 |
131 | Zibo | Shandong | −0.47438 | −0.02474 |
132 | Zaozhuang | Shandong | −0.49694 | −0.06659 |
133 | Dongying | Shandong | −0.67694 | −0.40058 |
134 | Yantai | Shandong | −0.43025 | 0.057156 |
135 | Weifang | Shandong | −0.6611 | −0.37118 |
136 | Jining | Shandong | −0.36247 | 0.182921 |
137 | Taian | Shandong | −0.27669 | 0.342082 |
138 | Weihai | Shandong | −0.55127 | −0.1674 |
139 | Rizhao | Shandong | −0.37025 | 0.168486 |
140 | Linyi | Shandong | 1.831404 | 4.253566 |
141 | Dezhou | Shandong | −0.31576 | 0.269583 |
142 | Liaocheng | Shandong | −0.29385 | 0.310232 |
143 | Binzhou | Shandong | 0.040836 | 0.931233 |
144 | Heze | Shandong | 0.070261 | 0.985831 |
145 | Zhengzhou | Henan | 0.54524 | 0.282566 |
146 | Kaifeng | Henan | 0.269364 | 0.053586 |
147 | Luoyang | Henan | 0.415253 | 0.174676 |
148 | Pingdingshan | Henan | −0.21199 | −0.34594 |
149 | Anyang | Henan | 0.591732 | 0.321155 |
150 | Hebi | Henan | 0.306126 | 0.084099 |
151 | Xinxiang | Henan | 1.300494 | 0.909436 |
152 | Jiaozuo | Henan | −0.70323 | −0.75368 |
153 | Puyang | Henan | −0.42632 | −0.52384 |
154 | Xuchang | Henan | 0.057256 | −0.12247 |
155 | Luohe | Henan | 0.337541 | 0.110174 |
156 | Sanmenxia | Henan | −0.17706 | −0.31695 |
157 | Nanyang | Henan | −0.23032 | −0.36116 |
158 | Shangqiu | Henan | 0.594604 | 0.323539 |
159 | Xinyang | Henan | −0.10897 | −0.26044 |
160 | Zhoukou | Henan | 0.072022 | −0.11021 |
161 | Zhumadian | Henan | 0.435657 | 0.191611 |
162 | Wuhan | Hubei | −0.20812 | −0.30838 |
163 | Huangshi | Hubei | 0.380738 | 0.20592 |
164 | Shiyan | Hubei | 0.163261 | 0.015978 |
165 | Yichang | Hubei | 1.629116 | 1.296238 |
166 | Xiangfan | Hubei | 0.38812 | 0.212367 |
167 | Ezhou | Hubei | −0.42163 | −0.49486 |
168 | Jinmen | Hubei | 0.409257 | 0.230828 |
169 | Xiaogan | Hubei | −0.62101 | −0.66899 |
170 | Jingzhou | Hubei | 1.180686 | 0.904585 |
171 | Huanggang | Hubei | −0.29478 | −0.38407 |
172 | Xianning | Hubei | −0.45912 | −0.5276 |
173 | Suizhou | Hubei | 1.130519 | 0.860769 |
174 | Changsha | Hunan | 0.890677 | 0.869584 |
175 | Zhuzhou | Hunan | 0.18113 | 0.167953 |
176 | Xiangtan | Hunan | −0.92194 | −0.92282 |
177 | Hengyang | Hunan | −1.62677 | −1.61978 |
178 | Shaoyang | Hunan | 0.397515 | 0.381923 |
179 | Yueyang | Hunan | −0.1575 | −0.1669 |
180 | Changde | Hunan | 2.008414 | 1.974851 |
181 | Zhangjiajie | Hunan | −0.52758 | −0.53285 |
182 | Yiyang | Hunan | −0.74386 | −0.74671 |
183 | Chenzhou | Hunan | 0.359088 | 0.343925 |
184 | Yongzhou | Hunan | 0.474048 | 0.457603 |
185 | Huaihua | Hunan | 0.381726 | 0.366311 |
186 | Loudi | Hunan | −1.51698 | −1.51121 |
187 | Guangzhou | Guangdong | −1.21975 | −1.23501 |
188 | Shaoguan | Guangdong | −0.50528 | −0.47093 |
189 | Shenzhen | Guangdong | 0.436537 | 0.536262 |
190 | Zhuhai | Guangdong | −0.72095 | −0.70158 |
191 | Shantou | Guangdong | 0.11597 | 0.193442 |
192 | Foshan | Guangdong | −0.40845 | −0.36739 |
193 | Jiangmen | Guangdong | 0.28294 | 0.372002 |
194 | Zhanjiang | Guangdong | 0.250871 | 0.337707 |
195 | Maoming | Guangdong | −0.17425 | −0.11692 |
196 | Zhaoqing | Guangdong | −1.22821 | −1.24405 |
197 | Huizhou | Guangdong | −0.53061 | −0.49802 |
198 | Meizhou | Guangdong | −0.45549 | −0.41769 |
199 | Shanwei | Guangdong | 0.535752 | 0.642365 |
200 | Heyuan | Guangdong | 0.379586 | 0.475357 |
201 | Yangjiang | Guangdong | 0.01007 | 0.08019 |
202 | Qingyuan | Guangdong | −0.27257 | −0.22207 |
203 | Dongguan | Guangdong | 7.123492 | 7.687429 |
204 | Zhongshan | Guangdong | −0.57192 | −0.5422 |
205 | Chaozhou | Guangdong | −0.03841 | 0.028346 |
206 | Jieyang | Guangdong | −1.31475 | −1.3366 |
207 | Yunfu | Guangdong | −1.20414 | −1.21831 |
208 | Nanning | Guangxi | 0.138094 | 0.028772 |
209 | Liuzhou | Guangxi | 0.463053 | 0.322516 |
210 | Guilin | Guangxi | −1.11879 | −1.10738 |
211 | Wuzhou | Guangxi | −0.14081 | −0.22334 |
212 | Beihai | Guangxi | 0.800893 | 0.627905 |
213 | Fangchenggang | Guangxi | −0.09698 | −0.18372 |
214 | Qinzhou | Guangxi | −0.20268 | −0.27927 |
215 | Guigang | Guangxi | 1.189621 | 0.979292 |
216 | Yulin | Guangxi | 1.397779 | 1.167455 |
217 | Baise | Guangxi | 0.277851 | 0.155104 |
218 | Hezhou | Guangxi | −0.3003 | −0.36751 |
219 | Hechi | Guangxi | −0.37315 | −0.43337 |
220 | Laibin | Guangxi | −0.08068 | −0.16899 |
221 | Chongzuo | Guangxi | −0.18622 | −0.26439 |
222 | Haikou | Hainan | 0.756012 | −0.10631 |
223 | Sanya | Hainan | 2.080534 | 0.567777 |
224 | Chongqing | Chongqing | −0.0118 | |
225 | Chengdu | Sichuan | 1.387773 | 0.847688 |
226 | Zigong | Sichuan | 0.346122 | 0.041645 |
227 | Panzhihua | Sichuan | −1.07356 | −1.05692 |
228 | Luzhou | Sichuan | 0.681912 | 0.301484 |
229 | Deyang | Sichuan | 0.169929 | −0.0947 |
230 | Mianyang | Sichuan | −1.40085 | −1.31018 |
231 | Guangyuan | Sichuan | −0.31248 | −0.46799 |
232 | Suining | Sichuan | −0.2908 | −0.45121 |
233 | Neijiang | Sichuan | −0.59552 | −0.68701 |
234 | Leshan | Sichuan | −1.27323 | −1.21143 |
235 | Nanchong | Sichuan | 0.681486 | 0.301154 |
236 | Meishan | Sichuan | 0.597725 | 0.236339 |
237 | Yibin | Sichuan | −0.61184 | −0.69964 |
238 | Guangan | Sichuan | 1.535255 | 0.96181 |
239 | Dazhou | Sichuan | 0.716645 | 0.328361 |
240 | Yaan | Sichuan | −1.44421 | −1.34373 |
241 | Bazhong | Sichuan | 0.543564 | 0.194429 |
242 | Ziyang | Sichuan | −0.2715 | −0.43628 |
243 | Guiyang | Guizhou | −0.308 | 0.267204 |
244 | Liupanshui | Guizhou | −0.10159 | 0.645183 |
245 | Zunyi | Guizhou | −2.29372 | −1.36893 |
246 | Anshun | Guizhou | 0.548663 | 1.835948 |
247 | Kunming | Yunnan | 0.007942 | −0.14291 |
248 | Qujing | Yunnan | 1.038497 | 0.733414 |
249 | Yuxi | Yunnan | 0.30601 | 0.110551 |
250 | Baoshan | Yunnan | 0.483655 | 0.26161 |
251 | Shaotong | Yunnan | −0.54346 | −0.61179 |
252 | Lijiang | Yunnan | 0.963303 | 0.669473 |
253 | Simao | Yunnan | 0.212645 | 0.031159 |
254 | Lincang | Yunnan | −0.11591 | −0.24823 |
255 | Xian | Shaanxi | 0.121028 | 0.211093 |
256 | Tongchuan | Shaanxi | −1.02695 | −1.02912 |
257 | Baoji | Shaanxi | −0.10214 | −0.03001 |
258 | Xianyang | Shaanxi | −0.87945 | −0.86977 |
259 | Weinan | Shaanxi | −0.82571 | −0.8117 |
260 | Yanan | Shaanxi | 0.264379 | 0.365962 |
261 | Hanzhong | Shaanxi | 0.032731 | 0.115703 |
262 | Yulin | Shaanxi | −0.10492 | −0.033 |
263 | Ankang | Shaanxi | 1.114078 | 1.283927 |
264 | Shangluo | Shaanxi | 0.678829 | 0.813709 |
265 | Lanzhou | Gansu | 0.677763 | 0.515168 |
266 | Jiayuguan | Gansu | 0.906522 | 0.721757 |
267 | Jinchang | Gansu | 0.343099 | 0.212937 |
268 | Baiyin | Gansu | −0.20667 | −0.28355 |
269 | Tianshui | Gansu | −0.18993 | −0.26844 |
270 | Wuwei | Gansu | 0.225993 | 0.107179 |
271 | Zhangye | Gansu | −0.469 | −0.52046 |
272 | Pingliang | Gansu | −0.11815 | −0.20362 |
273 | Jiuquan | Gansu | −0.04386 | −0.13652 |
274 | Qingyang | Gansu | 0.488924 | 0.344629 |
275 | Dingxi | Gansu | −0.7664 | −0.78904 |
276 | Longnan | Gansu | −0.89582 | −0.90592 |
277 | Xining | Qinghai | −0.18809 | |
278 | Yinchuan | Ningxia | −0.04179 | 0.059206 |
279 | Shizuishan | Ningxia | −0.06651 | 0.031879 |
280 | Wuzhong | Ningxia | 0.217087 | 0.345368 |
281 | Guyuan | Ningxia | −0.11229 | −0.01872 |
282 | Zhongwei | Ningxia | −1.14909 | −1.16481 |
283 | Urumqi | Xinjiang | 0.298819 | 0.130162 |
284 | Kelamayi | Xinjiang | −0.55072 | −0.60906 |
Appendix A.2. Robust Test
Two-Level Logistic Model | |
---|---|
GINI | 0.011 * |
INNO | 2.102 *** |
GOV | 0.030 *** |
HUMCAP | 1.624 ** |
FIN | 2.316 *** |
INDO | 1.014 |
FASSE | 1.940 |
AGE65 | 1.280 |
ENTR | 0.876 |
Constant | 0.002 ** |
Log likelihood | −386.885 |
p-value | 0.000 |
No of obs | 284 |
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Variables | Definition | Minimum | Maximum | Average |
---|---|---|---|---|
GINI | Gini coefficient | 0.06 | 0.44 | 0.19 |
INNO | Ln (fiscal expenditure for science and technology) | 5.75 | 13.26 | 9.51 |
GOV | (Public finance expenditure—fiscal expenditure for science and technology)/gross regional product (%) | 0.04 | 0.49 | 0.11 |
HUMCAP | Ln (number of students in colleges and universities per 10,000) | −3.77 | 4.19 | 0.64 |
FIN | Balance of bank deposits and loans/gross regional product | 0.73 | 6.58 | 1.86 |
INDO | Growth rate of total industrial output (%) | 4.70 | 134.12 | 60.51 |
FASSE | Investment in fixed assets/gross regional product (%) | 16.00 | 93.44 | 46.17 |
AGE65 | Share of population older than 65 years (%) | 8.67 | 16.20 | 12.33 |
ENTR | Employment in urban individual economy and private economy/population (%) | 2.00 | 21.00 | 6.29 |
Two-Level Logistic Model | Logit Model | |
---|---|---|
GINI | 0.015 ** | 0.224 * |
INNO | 1.779 ** | 1.444 * |
GOV | 0.874 *** | 0.904 *** |
HUMCAP | 1.657 ** | 1.763 * |
FIN | 2.731 *** | 3.059 *** |
INDO | 1.006 | 1.011 |
FASSE | 1.000 | 1.003 |
AGE65 | 5.036 | 0.916 |
ENTR | 0.922 | 0.881 |
Constant | 0.007 * | 0.024 * |
Log likelihood | −411.004 | 356.293 |
p-value | 0.000 | 0.000 |
No. of obs. | 284 | 279 |
Small Economies | Large Economies | |
---|---|---|
GINI | 0.015 * | 0.019 * |
INNO | 1.944 * | 0.876 |
GOV | 0.889 ** | 0.770 ** |
HUMCAP | 1.611 *** | 1.560 * |
FIN | 2.502 *** | 5.776 *** |
INDO | 0.992 | 1.046 * |
FASSE | 1.009 | 0.990 |
AGE65 | 1.283 | 3.275 |
ENTR | 0.950 | 0.903 |
Constant | 0.001 ** | 0.586 |
Log likelihood | −266.506 | −146.468 |
p-value | 0.018 | 0.018 |
No. of obs. | 182 | 102 |
Resource-Based Economies | Synthetic Economies | |
---|---|---|
GINI | 0.045 * | 0.026 * |
INNO | 1.985 ** | 2.065 ** |
GOV | 0.968 | 0.752 *** |
HUMCAP | 1.749 | 1.507 *** |
FIN | 0.267 * | 2.814 *** |
INDO | 1.019 | 0.990 |
FASSE | 0.969 | 1.025 * |
AGE65 | 5.493 | 4.623 |
ENTR | 0.905 | 0.944 |
Constant | 0.001 * | 0.005 * |
Log likelihood | −157.695 | −255.217 |
p-value | 0.011 | 0.003 |
No. of obs. | 108 | 176 |
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Wang, X.; Li, M. Determinants of Regional Economic Resilience to Economic Crisis: Evidence from Chinese Economies. Sustainability 2022, 14, 809. https://doi.org/10.3390/su14020809
Wang X, Li M. Determinants of Regional Economic Resilience to Economic Crisis: Evidence from Chinese Economies. Sustainability. 2022; 14(2):809. https://doi.org/10.3390/su14020809
Chicago/Turabian StyleWang, Xiaowen, and Meiyue Li. 2022. "Determinants of Regional Economic Resilience to Economic Crisis: Evidence from Chinese Economies" Sustainability 14, no. 2: 809. https://doi.org/10.3390/su14020809
APA StyleWang, X., & Li, M. (2022). Determinants of Regional Economic Resilience to Economic Crisis: Evidence from Chinese Economies. Sustainability, 14(2), 809. https://doi.org/10.3390/su14020809