Research on the Multilayer Network of Relations of Western Agricultural Trade along the Belt and Road
Abstract
:1. Introduction
2. Materials
2.1. Research Objects
2.1.1. Belt and Road Countries
2.1.2. Important Agricultural Products in the Western Region
2.2. Research Data
3. Model
3.1. Matrix Description of Multilayer Network of Trade Relations
3.2. Construction of the Weighted Super Adjacency Matrix
3.2.1. Construction of the Intralayer Relation Matrices
3.2.2. Construction of the Matrices of Interlayer Relations
3.2.3. Construction of Weighted Super Adjacency Matrix
3.3. Construction of the Multilayer Network of Trade Relations
4. Methods and Results
4.1. Methods
4.1.1. Local Network Relations: Classification Algorithm for Key Trading Countries and Potential Trading Countries
4.1.2. Comparative Analysis of the Trade Development Priorities Based on Local Network Relations
4.2. Results
5. Discussion and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Area | Countries |
---|---|
Asia | Korea, Mongolia, Singapore, Timor-Leste, Malaysia, Myanmar, Cambodia, Vietnam, Brunei, Iran, Nepal, Iraq, Pakistan, Sri Lanka, Bangladesh, Maldives, Kuwait, Turkey, Laos, Qatar, Oman, Lebanon, Saudi Arabia, Bahrain, Afghanistan, Azerbaijan, Georgia, Armenia, Kazakhstan, Yemen, Kyrgyzstan, Tajikistan, Uzbekistan, Thailand, Indonesia, United Arab Emirates, Philippines |
Europe | Cyprus, Russia, Austria, Greece, Poland, Serbia, Czech Republic, Bulgaria, Slovakia, Croatia, Estonia, Italy, Moldova, Lithuania, Luxembourg, Montenegro, Slovenia, Hungary, Ukraine, North Macedonia, Belarus, Malta, Romania, Latvia, Portugal, Albania, Bosnia and Herzegovina |
Africa | Sudan, South Africa, Senegal, Sierra Leone, Côte d’Ivoire, Somalia, Cameroon, South Sudan, Seychelles, Guinea, Ghana, Zambia, Mozambique, Gabon, Namibia, Mauritania, Angola, Togo, Djibouti, Ethiopia, Kenya, Nigeria, Chad, Congo-Brazzaville, Zimbabwe, Algeria, Tanzania, Burundi, Cape Verde Uganda, Gambia, Niger, Benin, Rwanda, Morocco, Madagascar, Tunisia, Libya, Egypt, Equatorial Guinea, Liberia, Lesotho, Comoros |
Oceania | New Zealand, Papua New Guinea, Samoa, Fiji, Micronesia, Cook Islands, Tonga, Vanuatu, Kiribati, the Solomon Islands |
South America | Chile, Guyana, Bolivia, Uruguay, Venezuela, Suriname, Ecuador, Peru. |
North America | Costa Rica, Panama, El Salvador, Dominica, Trinidad and Tobago, Antigua and Barbuda, Dominica, Cuba, Grenada, Barbados, Jamaica |
Area | Special Products and HS Two-Digit Codes | Categories |
---|---|---|
Tibet | Yak (HS01); Rhodiola (HS06); highland edible mushroom (HS07); ginseng fruit (HS08); barley rice (HS10); saffron (HS12); yak meat (HS16); water, beer, barley drink (HS22) | category I, II, IV |
Xinjiang | Cattle, sheep (HS01); dairy (HS04); potato (HS07); condiment (HS09); wolfberry (HS12); Hami melon, grape, jujube, apple, pear, dried fruit (HS08); lamb (HS16); raisins (HS20) | category I, II, IV |
Qinghai | Yak, Tibetan sheep (HS01); dairy (HS04); potato (HS07); barley rice, quinoa (HS10); canola, sea buckthorn (HS12); sea buckthorn drink, barley drink (HS22) | category I, II, IV |
Gansu | Potato, carrot (HS07); apple (HS08); peppers (HS09); herbs (HS12) | category II |
Shaanxi | Edible mushroom, konjac (HS07); pepper, tea (HS09); herbs (HS12); apple, pomegranate, kiwi, jujube, persimmon, walnut (HS08) | category II |
Ningxia | Cattle, sheep (HS01); dairy (HS04); potato (HS07); wolfberry, licorice (HS12); wine (HS22) | category I, II, IV |
Inner Mongolia | Cattle, sheep (HS01); dairy (HS04); potato (HS07); sunflower (HS12) | category I, II |
Sichuan | White wine (HS22); tobacco (HS24) | category IV |
Chongqing | Tangerine (HS08); Huang Lian, Codonopsis pilosula (HS12); orange juice, squash (HS20); condiments (HS21) | category II, IV |
Yunnan | Flower (HS06); edible mushroom (HS07); walnut, fruit, vegetables (HS08); tea, coffee (HS09); Chinese herbs (HS12); healthcare products (HS21) | category II, IV |
Guizhou | Edible mushroom (HS07); vegetables (HS08); tea, chillis (HS09); white wine (HS22); buckwheat, dendrobium, Chinese herbs, rapeseed (HS12); tobacco (HS24) | category II, IV |
Guangxi | Grapefruit, kumquat (HS08); tea (HS09) | category II |
Type | Countries |
---|---|
A2 | Ecuador, Jamaica, Nigeria, Costa Rica |
A1 | Italy, Tunisia, Togo, Cameroon, Côte d’Ivoire, Zambia, Mali, South Korea, South Africa |
A3 | Ghana, Gabon, Malaysia, Indonesia, Poland, Myanmar, Benin, Papua New Guinea, Samoa, Solomon Islands |
A5 | New Zealand, Philippines, Portugal, Dominica, Thailand, Kenya, Suriname, Uruguay, Rwanda |
A6 | Vietnam |
A8 | Morocco, Uganda, Federated States of Micronesia, Burundi |
B3 | Chile |
Type | Countries |
---|---|
A1 | Serbia, Croatia, Slovakia, Czech Republic, Hungary, Luxembourg, Moldova, Bulgaria, Poland, Estonia, Ukraine, Lithuania, Kuwait, Bahrain, Seychelles Islands, Slovenia, Cape Verde, Ecuador, Laos, Maldives Uruguay, Algeria, Chile, Dominica, El Salvador, Solomon Islands, Cook Islands, Singapore |
A3 | Barbados, UAE, Sri Lanka, Costa Rica, Fiji |
A5 | Russia, Myanmar, New Zealand, Morocco, Nepal, Indonesia, Vietnam, Thailand, Korea, Malaysia, Mauritania, Kazakhstan, Pakistan, Gambia, Guyana, Suriname |
Type | Countries |
---|---|
A1 | Austria, Romania, Kuwait, Qatar, Antigua and Barbuda, Saudi Arabia, Italy, Barbados, Equatorial Guinea, Comoros, Sudan, Ukraine, Morocco, Kenya, Gambia, Bahrain, Tanzania, Cuba, Ethiopia, Jamaica, Micronesia, Portugal, Mali, Bolivia, Burundi, OECS, Peru, Egypt, Bangladesh, Ecuador, Rwanda, Seychelles, Philippines, Russia, Yemen, Uruguay, Kazakhstan, Zambia, Cape Verde, Gabon, El Salvador |
A3 | Vanuatu, New Zealand, Dominica, Papua New Guinea, Costa Rica, Kiribati |
A5 | Togo, Benin, Algeria, Cameroon, Sierra Leone, Chile, Thailand |
A4 | Ghana, Nigeria, Korea, Sri Lanka, Solomon Islands, Cote d’Ivoire |
A6 | Samoa |
A8 | Fiji |
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Xie, F.; Yin, X.; Sun, R. Research on the Multilayer Network of Relations of Western Agricultural Trade along the Belt and Road. Mathematics 2022, 10, 3298. https://doi.org/10.3390/math10183298
Xie F, Yin X, Sun R. Research on the Multilayer Network of Relations of Western Agricultural Trade along the Belt and Road. Mathematics. 2022; 10(18):3298. https://doi.org/10.3390/math10183298
Chicago/Turabian StyleXie, Fengjie, Xiaoxiao Yin, and Ruifen Sun. 2022. "Research on the Multilayer Network of Relations of Western Agricultural Trade along the Belt and Road" Mathematics 10, no. 18: 3298. https://doi.org/10.3390/math10183298
APA StyleXie, F., Yin, X., & Sun, R. (2022). Research on the Multilayer Network of Relations of Western Agricultural Trade along the Belt and Road. Mathematics, 10(18), 3298. https://doi.org/10.3390/math10183298