Topology of the World Tourism Web
Abstract
:1. Introduction
2. Materials and Methods
2.1. Theoretical Basis
- a small diameter and a small average path length in the large networks (small worlds);
- degree distributions with a fat tail in many observed large networks; only a few of them strictly follow the power law, even if they visually appear as scale-free distributions;
- positive assortativity (high-degree nodes tend to be related to other relatively high-degree nodes; a technological and biological network is expected to observe negative assortativity or the correlation of in-degrees across linked nodes);
- patterns between the core and the periphery, where the core is made of highly connected and interconnected nodes;
- high clustering coefficients;
- a decreasing rate of clustering among the higher nodes, given the degree (overall clustering is significantly lower than average clustering);
- homophily, which may be a result of an opportunity or a choice (people tend to connect to similar people to themselves);
- weak ties, which may be important due to their bridging behavior in relation to dissemination (mostly information), but this property still lacks systematization in research for its generalization; and
- structural holes—a lack of connection between groups.
2.2. Basic SNA Elements Applied to Tourism
2.3. Definitions and Data
2.4. Analysis
- Average in-degree is the average number of incoming links (the source countries from which tourists arrive to the target countries). In terms of the tourism network, the in-degree can be an indicator of how likely is that other countries will be drawn to the observed country (presumably) due to its touristic attractiveness. So, the average in-degree points out to the average number of countries drawn to one country in a tourism network.
- Average out-degree is the average number of target countries to which tourists travel from the source countries. Given the data used, the average out-degree must match the average out-degree, but individual values of countries’ in- and out-degrees do not have to be the same. Hence, standard deviations may be different, revealing different underlying distributions.
- Average degree is the average number of countries to which a country is connected in the network.
- Average weighted in-degree or inward link strength is the average number of tourist arrivals from source countries. It is the average of individual countries’ weighted in-degree (the number of tourists drawn to a country).
- Average weighted out-degree or outward link strength is the average number of tourist departures to target countries.
- Average weighted degree is the average number of tourist arrivals and departures per country. The weighted degree illustrates a country’s share in the tourism market, measured by the number of tourists.
- Diameter [48] is a maximal distance in the network and shows how many connections it takes to traverse the network. It is a longest shortest path length.
- Radius [48] is the minimum over distances of each country-node to the farthest country-node in the network (or a minimum over all eccentricity values), indicating how (dis)connected countries are.
- Average path length [48] measures the average of the possible geodesic (shortest path) between all countries in the network and is an indication of network efficiency.
- Density [41] is a share of links in the network in all possible connections in the network. Generally, values closer to 1 mean that it is a dense graph, while values closer to 0 reveal a sparse graph.
- Average clustering coefficient [49,50] is an average of individual clustering coefficients. Individual clustering coefficients measure the degree of connections between the countries to which a certain country is connected. If a clustering coefficient of a country is closer to 1, it means that almost all its connections are connected between themselves. This also indicates that the country is less important in the network.
- Number of triangles [51] is a summation of open or closed triples in each country’s network.
- Number of paths (length 2) [51] is a summation of all paths of length 2 for each node.
- Clustering coefficient (triangle method) [51] is the ratio of the number of closed triples to the number of all possible triples in the network.
- Number of strongly connected components [52] is the number of subgraphs that contain interconnected nodes. In a strongly connected component, each country can be reached by any other country, and vice versa.
- Number of weakly connected components [52] is the number of subgraphs where the links can be formed in only one direction (and observed as undirected in the opposite direction).
- Eccentricity of the largest weakly connected components [55] can be interpreted as a diameter of each node in the largest weakly connected component.
- Closeness centrality [48] is a measure of a country’s position in the network based on the distance to every other country in the network, where a poorly connected country can have a higher centrality if it has a high proportion of high-degree countries in direct connections. Normalized closeness centrality is more commonly used, where values closer to 0 indicate a greater distance from the center of the graph, meaning a worse position in the tourism network in comparison to neighboring nodes.
- Betweenness centrality [48] measures how many times a country appears on the shortest path between every two other countries respective to all shortest paths, which identifies countries that may or may not be central by other parameters but connect otherwise disconnected countries by serving as bridges. From the tourism perspective, this means that tourists from otherwise unconnected countries may find themselves on the same location (a country with a high betweenness centrality) and possibly interact, which emphasizes the importance of such countries for information, cultural, and other exchange.
- Prestige rank [41] is a measure of a node’s importance in the network based on the inbound tourism. Countries with high prestige ranks are the ones that host (many) tourists from many different countries, but do not necessarily reciprocate with their outbound tourism.
- Authority [59] is more commonly used in www analysis, where higher values are interpreted as that node having stored more valuable information. In the tourism network, the interpretation cannot be the value of information, but rather the overall tourism value (both for outbound and inbound tourism).
- Hub [38] measures how well connected a node is. Hubs are countries that have strong inbound and outbound tourism connections to other important nodes in the network.
- Page rank [60] was first used to rank web pages. It considers the relationship of the in- and out-degree for a node and determines the probability that the node will be reached by a walk. The higher the probability, the better the country’s rank. It can be observed as a measure of popularity.
3. Results and Discussion
3.1. Network Topology and Structure
3.1.1. Basic Network Measures
3.1.2. Countries’ In-Degrees and Out-Degrees
3.1.3. Centrality Measures
3.1.4. Clustering, Communities, and Patterns
3.2. Does the Tourism Network Behave as a Social or Technological Network?
3.2.1. Small-World and Scale-Free Network Properties
3.2.2. Pareto (20/80) Rule
3.2.3. Assortativity
3.2.4. The Patterns between the Core and the Periphery
3.2.5. High Clustering Coefficients
3.2.6. Homophily
3.2.7. Weak Ties
3.2.8. Structural Holes
3.3. Network Diffusion Properties
4. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Country | Source: Arrivals of Non-Resident Tourists at National Borders | Source: Arrivals of Non-Resident Tourists by Accommodation | Source: Arrivals of Non-Resident Visitors at National Borders | Source: Statistics Bureau (or Tourist Bureau) of the Country |
---|---|---|---|---|
Afghanistan | Data unavailable | |||
Albania | Albania: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2015–2019 (07.2020) | |||
Algeria | Algeria: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2015–2019 (05.2020) | |||
American Samoa | American Samoa: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2013–2017 (11.2018)—data for 2018 not available | |||
Andorra | Andorra: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019) | |||
Angola | Angola: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (07.2020) | |||
Anguilla | Anguilla: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (09.2020) | |||
Antigua and Barbuda | Antigua and Barbuda: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (09.2019) | |||
Argentina | Argentina: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (12.2019) | |||
Armenia | Armenia: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (12.2019) | |||
Aruba | Aruba: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019) | |||
Australia | Australia: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (05.2019) | |||
Austria | Austria: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (07.2020) | |||
Azerbaijan | Azerbaijan: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by country of residence 2015–2019 (07.2020) | |||
Bahamas | Bahamas: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (07.2020) | |||
Bahrain | Bahrain: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2014–2018 (11.2019)—data for 2018 not available | |||
Bangladesh | Bangladesh: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2010–2014 (12.2015)—data for 2018 not available | |||
Barbados | Barbados: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019) | |||
Belarus | Belarus: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (07.2020) | |||
Belgium | Belgium: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2014–2018 (07.2019) | |||
Belize | Belize: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (10.2019) | |||
Benin | Benin: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (05.2019) | |||
Bermuda | Bermuda: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (04.2019) | |||
Bhutan | Bhutan: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (07.2020) | |||
Bolivia, Plurinational State of | Bolivia, Plurinational State of: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (11.2019) | |||
Bonaire | https://www.cbs.nl/en-gb/figures/detail/83191ENG?q=tourism (accessed on 15 December 2020) | |||
Bosnia and Herzegovina | Bosnia and Herzegovina: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2014–2018 (07.2019) | |||
Botswana | Botswana: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (10.2019) | |||
Brazil | Brazil: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (09.2019) | |||
British Virgin Islands | British Virgin Islands: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2009–2013 (04.2015)—data for 2018 not available | |||
Brunei Darussalam | Brunei Darussalam: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (05.2020) | |||
Bulgaria | Bulgaria: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (06.2020) | |||
Burkina Faso | Burkina Faso: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by country of residence 2014–2018 (06.2019) | |||
Burundi | Burundi: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2013–2017 (11.2018)—data for 2018 not available | |||
Cabo Verde | Cape Verde: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by country of residence 2015–2019 (03.2020) | |||
Cambodia | Cambodia: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (05.2019) | |||
Cameroon | Cameroon: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by nationality 2014–2018 (11.2019) | |||
Canada | Canada: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (12.2019) | |||
Cayman Islands | Cayman Islands: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (10.2019) | |||
Central African Republic | Central African Republic: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (10.2019)—data for 2018 not available | |||
Chad | Chad: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2013–2017 (12.2018)—data for 2018 not available | Chad: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by nationality 2013–2017 (12.2018)—data for 2018 not available | ||
Chile | Chile: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (07.2020) | |||
China | China: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2014—2018 (12.2019) | |||
Colombia | Colombia: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019) | |||
Comoros | Comoros: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (05.2020) | |||
Congo | Congo: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by country of residence 2014–2018 (11.2019) | |||
Cook Islands | Cook Islands: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (04.2020) | |||
Costa Rica | Costa Rica: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (05.2020) | |||
Côte d’ivoire | Cote d’ivoire: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (07.2019) | |||
Croatia | Croatia: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (07.2020) | |||
Cuba | Cuba: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (12.2019) | |||
Curaçao | Curaçao: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (07.2019) | |||
Cyprus | Cyprus: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (07.2019) | Cyprus: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2014–2018 (07.2019) | ||
Czech Republic | Czech Republic: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by nationality 2015–2019 (05.2020) | |||
Democratic Republic of the Congo | Democratic Republic of the Congo: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2013—2017 (12.2018)—data for 2018 not available | |||
Denmark | Denmark: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (07.2020) | |||
Djibouti | Data unavailable | |||
Dominica | Dominica: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (12.2019) | |||
Dominican Republic | Dominican Republic: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (03.2020) | |||
Ecuador | Ecuador: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (11.2019) | |||
Egypt | Egypt: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2014–2018 (11.2019) | |||
El Salvador | El Salvador: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (07.2020) | |||
Equatorial Guinea | Data unavailable | |||
Eritrea | Data unavailable | |||
Estonia | Estonia: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2014–2018 (11.2019) | |||
Eswatini | Swaziland: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by country of residence 2014–2018 (11.2019) | |||
Ethiopia | Ethiopia: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019) | |||
Fiji | Fiji: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (05.2020) | |||
Finland | Finland: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (07.2020) | |||
France | France: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019) | France: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2014–2018 (12.2019) | ||
French Guiana | French Guiana: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019)—data for 2018 not available | |||
French Polynesia | French Polynesia: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (03.2020) | |||
Gabon | Data unavailable | |||
Gambia | Gambia: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (10.2019) | |||
Georgia | Georgia: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by country of residence 2014–2018 (11.2019) | |||
Germany | Germany: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (07.2020) | |||
Ghana | Data unavailable | |||
Greece | Greece: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (07.2020) | Greece: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2014–2018 (11.2019) | ||
Grenada | Grenada: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (05.2020) | |||
Guadeloupe | Guadeloupe: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2011–2015 (11.2016)—data for 2018 not available | |||
Guam | Guam: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (06.2020) | |||
Guatemala | Guatemala: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (07.2019) | |||
Guinea | Guinea: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2013–2017 (01.2019)—data for 2018 not available | |||
Guinea-Bissau | Data unavailable | |||
Guyana | Guyana: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (04.2020) | |||
Haiti | Haiti: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (05.2020) | |||
Honduras | Honduras: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2013–2017 (12.2018)—data for 2018 not available | |||
Hong Kong, China | Hong Kong, China: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (07.2020) | |||
Hungary | Hungary: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (07.2020) | Hungary: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by nationality 2015–2019 (07.2020) | ||
Iceland | Iceland: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (11.2019) | Iceland: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by nationality 2014–2018 (11.2019) | ||
India | India: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (01.2020) | |||
Indonesia | Indonesia: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2015–2019 (09.2020) | |||
Iran, Islamic Republic of | Iran, Islamic Republic of: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2014–2018 (07.2019) | |||
Iraq | Data unavailable | |||
Ireland | Ireland: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (10.2019) | |||
Israel | Israel: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (05.2019) | Israel: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by country of residence 2014–2018 (05.2019) | ||
Italy | Italy: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (07.2020) | Italy: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by nationality 2015–2019 (07.2020) | ||
Jamaica | Jamaica: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (07.2020) | |||
Japan | Japan: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2015–2019 (07.2020) | |||
Jordan | Jordan: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (06.2019) | |||
Kazakhstan | Kazakhstan: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2015–2019 (07.2020) | |||
Kenya | Data unavailable | |||
Kiribati | Kiribati: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (11.2019) | |||
Korea, Republic of | Korea, Republic of: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2015–2019 (07.2020) | |||
Kuwait | Kuwait: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2014–2018 (11.2019) | |||
Kyrgyzstan | Kyrgyzstan: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (10.2019) | |||
Lao People’s Democratic Republic | Lao People’s Democratic Republic: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2015–2019 (05.2020) | |||
Latvia | Latvia: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (07.2020) | |||
Lebanon | Lebanon: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (06.2020) | |||
Lesotho | Lesotho: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2015–2019 (09.2020) | |||
Liberia | Data unavailable | |||
Libya | Data unavailable | |||
Liechtenstein | Liechtenstein: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (07.2020) | |||
Lithuania | Lithuania: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (12.2019) | Lithuania: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2014–2018 (12.2019) | ||
Luxembourg | Luxembourg: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2014–2018 (09.2019) | |||
Macao, China | Macao, China: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by country of residence 2015–2019 (07.2020) | |||
Madagascar | Madagascar: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (11.2019) | |||
Malawi | Malawi: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019) | |||
Malaysia | Malaysia: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (07.2020) | |||
Maldives | Maldives: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (07.2019) | |||
Mali | Mali: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (06.2019) | |||
Malta | Malta: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (07.2020) | |||
Marshall Islands | Marshall Islands: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2013–2017 (06.2018)—data for 2018 not available | |||
Martinique | Martinique: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (06.2019) | Martinique: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2014–2018 (06.2019) | ||
Mauritania | Data unavailable | |||
Mauritius | Mauritius: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (07.2020) | |||
Mexico | Mexico: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (12.2019) | |||
Micronesia, Federated States of | Micronesia, Federated States of: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2012–2016 (10.2017)—data for 2018 not available | |||
Moldova, Republic of | Moldova, Republic of: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by nationality 2015–2019 (07.2020) | |||
Monaco | Monaco: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by nationality 2015–2019 (07.2020) | |||
Mongolia | Mongolia: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (04.2020) | |||
Montenegro | Montenegro: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by nationality 2014–2018 (11.2019) | |||
Montserrat | Montserrat: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (12.2019) | |||
Morocco | Morocco: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (11.2019) | |||
Mozambique | Mozambique: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2015–2019 (09.2020) | |||
Myanmar | Myanmar: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (07.2020) | |||
Namibia | Namibia: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (09.2020) | |||
Nauru | Data unavailable | |||
Nepal | Nepal: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (07.2020) | |||
Netherlands | Netherlands: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2014–2018 (12.2019) | |||
New Caledonia | New Caledonia: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (05.2020) | |||
New Zealand | New Zealand: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (11.2019) | |||
Nicaragua | Nicaragua: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (06.2020) | |||
Niger | Niger: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (03.2020) | |||
Nigeria | Nigeria: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2012–2016 (01.2018)—data for 2018 not available | |||
Niue | Niue: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2013–2017 (06.2018)—data for 2018 not available | |||
North Macedonia | The Former Yugoslav Rep. of Macedonia: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by nationality 2015–2019 (07.2020) | |||
Northern Mariana Islands | Northern Mariana Islands: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2014–2018 (11.2019) | |||
Norway | Norway: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (06.2020) | |||
Oman | Oman: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (12.2019) | |||
Pakistan | Pakistan: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2009–2013 (04.2015)—data for 2018 not available | |||
Palau | Palau: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (10.2019) | |||
Palestine, State of | Palestine, State of: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by nationality 2015–2019 (05.2020) | |||
Panama | Panama: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (11.2019) | |||
Papua New Guinea | Papua New Guinea: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2015–2019 (04.2020) | |||
Paraguay | Paraguay: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (09.2019) | |||
Peru | Peru: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019) | |||
Philippines | Philippines: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (09.2020) | Philippines: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (09.2020) | ||
Poland | Poland: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2014–2018 (11.2019) | Statistics bureau https://stat.gov.pl/en/topics/culture-tourism-sport/tourism/tourists-in-tourist-accommodation-establishments-december-2018,3,15.html (accessed on 15 December 2020) | ||
Portugal | Portugal: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (07.2020) | |||
Puerto Rico | Puerto Rico: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019) | |||
Qatar | Qatar: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2015–2019 (04.2020) | |||
Reunion | Reunion: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (06.2020) | |||
Romania | Romania: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (07.2020) | |||
Russian Federation | Russian Federation: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2014–2018 (11.2019) | |||
Rwanda | Arrivals of non-resident tourists at national borders, by country of residence 2015–2017. Yearbook of Tourism Statistics, Data 2014–2018, 2020 Edition. World Tourism Organization (UNWTO). DOI; 10.18111/9789284421442 | |||
Saba | https://www.cbs.nl/en-gb/figures/detail/83191ENG?q=tourism (accessed on 15 December 2020) | |||
Saint Kitts and Nevis | Saint Kitts and Nevis: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (12.2019) | |||
Saint Lucia | Saint Lucia: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019) | |||
Saint Vincent and the Grenadines | Saint Vincent and the Grenadines: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (12.2019) | |||
Samoa | Samoa: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2015–2019 (03.2020) | |||
San Marino | San Marino: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2014–2018 (12.2019) | |||
Sao Tome and Principe | Sao Tome and Principe: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (01.2020) | |||
Saudi Arabia | Saudi Arabia: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (06.2020) | |||
Senegal | Senegal: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by nationality 2013–2017 (12.2018)—data for 2018 not available | |||
Serbia | Serbia: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by nationality 2015–2019 (07.2020) | |||
Seychelles | Seychelles: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (10.2019) | |||
Sierra Leone | Sierra Leone: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (06.2019) | |||
Singapore | Singapore: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2015–2019 (09.2020) | |||
Sint Eustatius | https://www.cbs.nl/en-gb/figures/detail/83191ENG?q=tourism (accessed on 15 December 2020) | |||
Sint Maarten (Dutch Part) | Saint Maarten: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (09.2019) | |||
Slovakia | Slovakia: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by nationality 2015–2019 (07.2020) | |||
Slovenia | Slovenia: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by nationality 2015–2019 (07.2020) | |||
Solomon Islands | Solomon Islands: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (07.2019) | |||
South Africa | South Africa: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (06.2020) | |||
South Sudan | Data unavailable | |||
Spain | Spain: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (07.2020) | Spain: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (07.2020) | ||
Sri Lanka | Sri Lanka: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (07.2020) | |||
Sudan | Sudan: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (11.2019) | |||
Suriname | Suriname: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2013–2017 (03.2018)—data for 2018 not available | |||
Sweden | Sweden: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2014–2018 (11.2019) | |||
Switzerland | Switzerland: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (06.2020) | |||
Syrian Arab Republic | Syrian Arab Republic: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by nationality 2009–2013 (04.2015) | |||
Taiwan (Province of China) | Taiwan (Province of China): Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by country of residence 2015–2019 (07.2020) | |||
Tajikistan | Tajikistan: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (10.2019) | |||
Tanzania, United Republic of | Tanzania, United Republic of: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (12.2019) | |||
Thailand | Thailand: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (12.2019) | |||
Timor-Leste | null: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (04.2020) | |||
Togo | Togo: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by country of residence 2015–2019 (04.2020) | |||
Tonga | Tonga: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2013–2017 (06.2018)—data for 2018 not available | |||
Trinidad and Tobago | Trinidad and Tobago: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (07.2020) | |||
Tunisia | Tunisia: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2015–2019 (05.2020) | Tunisia: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by nationality 2015–2019 (05.2020) | ||
Turkey | Turkey: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2014–2018 (11.2019) | Turkey: Country specific: Arrivals of non-resident tourists in all types of accommodation establishments, by nationality 2014–2018 (11.2019) | ||
Turkmenistan | Data unavailable | |||
Turks and Caicos Islands | Turks and Caicos Islands: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (12.2019) | |||
Tuvalu | Tuvalu: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2013–2017 (01.2019) | |||
Uganda | Uganda: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2013–2017 (11.2018)—data for 2018 not available | |||
Ukraine | Ukraine: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019) | |||
United Arab Emirates | United Arab Emirates: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by nationality 2015–2019 (07.2020) | |||
United Kingdom | United Kingdom: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2015–2019 (09.2020) | |||
United States | United States: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (04.2020) | |||
United States Virgin Islands | United States Virgin Islands: Country specific: Arrivals of non-resident tourists in hotels and similar establishments, by nationality 2014–2018 (06.2019) | |||
Uruguay | Uruguay: Country specific: Arrivals of non-resident visitors at national borders, by nationality 2014–2018 (07.2019) | |||
Uzbekistan | Uzbekistan: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (10.2019) | |||
Vanuatu | Vanuatu: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2015–2019 (04.2020) | |||
Venezuela, Bolivarian Republic of | Venezuela: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2013–2017 (10.2018)—data for 2018 not available | |||
Viet Nam | Viet Nam: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (09.2019) | |||
Yemen | Yemen: Country specific: Arrivals of non-resident tourists at national borders, by nationality 2011–2015 (12.2016)—data for 2018 not available | |||
Zambia | Zambia: Country specific: Arrivals of non-resident tourists at national borders, by country of residence 2014–2018 (11.2019) | |||
Zimbabwe | Zimbabwe: Country specific: Arrivals of non-resident visitors at national borders, by country of residence 2014–2018 (10.2019) |
Rank | Country | Closeness Centrality | Country | Eigenvector Centrality | Country | Authority | Country | Hub | Country | Prestige Rank | Country | Page Ranks | Country | Betweenness Centrality |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1 | United States | 0.97 | Canada | 1 | Canada | 0.127 | Germany | 0.098 | Belgium | 1 | China | 0.070 | United States | 0.0607 |
2 | Canada | 0.92 | Belgium | 1.000 | United Arab Emirates | 0.127 | France | 0.098 | Canada | 0.99994 | United States | 0.065 | Canada | 0.0578 |
3 | United Kingdom | 0.92 | Ecuador | 0.997 | Belgium | 0.127 | United States | 0.098 | Ecuador | 0.998 | Spain | 0.034 | Belgium | 0.0363 |
4 | France | 0.92 | United Arab Emirates | 0.996 | Ecuador | 0.126 | United Kingdom | 0.098 | United Arab Emirates | 0.997 | Italy | 0.033 | Australia | 0.0317 |
5 | Germany | 0.90 | Finland | 0.995 | United States | 0.126 | Italy | 0.097 | Finland | 0.996 | Hong Kong, China | 0.032 | New Zealand | 0.0224 |
6 | Italy | 0.89 | Australia | 0.993 | Finland | 0.126 | Switzerland | 0.097 | Australia | 0.995 | Turkey | 0.032 | Japan | 0.0212 |
7 | Switzerland | 0.87 | Colombia | 0.986 | New Zealand | 0.125 | Netherlands | 0.097 | Colombia | 0.989 | Saudi Arabia | 0.029 | China | 0.0196 |
8 | Netherlands | 0.86 | New Zealand | 0.985 | Uganda | 0.124 | Canada | 0.097 | New Zealand | 0.987 | United Kingdom | 0.028 | Italy | 0.0189 |
10 | Australia | 0.85 | China | 0.980 | Colombia | 0.123 | Spain | 0.096 | China | 0.984 | Mexico | 0.024 | Uganda | 0.0143 |
11 | Belgium | 0.84 | Mauritius | 0.977 | Mexico | 0.123 | Belgium | 0.095 | Mauritius | 0.981 | France | 0.022 | Mexico | 0.0134 |
12 | China | 0.82 | Uganda | 0.974 | Australia | 0.123 | Japan | 0.095 | Uganda | 0.976 | Greece | 0.022 | South Africa | 0.0116 |
13 | Sweden | 0.82 | Costa Rica | 0.966 | China | 0.123 | Austria | 0.095 | Costa Rica | 0.971 | United Arab Emirates | 0.021 | Korea, Republic of | 0.0107 |
14 | Spain | 0.82 | South Africa | 0.966 | South Africa | 0.122 | Australia | 0.094 | Seychelles | 0.971 | Malaysia | 0.019 | India | 0.0102 |
15 | Austria | 0.81 | Indonesia | 0.963 | Indonesia | 0.122 | Denmark | 0.094 | South Africa | 0.970 | Germany | 0.018 | Turkey | 0.00877 |
16 | Denmark | 0.80 | Seychelles | 0.962 | Malaysia | 0.121 | China | 0.094 | Indonesia | 0.969 | Canada | 0.018 | United Arab Emirates | 0.00810 |
17 | Norway | 0.78 | Korea, Republic of | 0.961 | Seychelles | 0.121 | Norway | 0.093 | Korea, Republic of | 0.966 | South Africa | 0.017 | Israel | 0.00686 |
18 | Russian Federation | 0.77 | Mexico | 0.959 | Korea, Republic of | 0.121 | Russian Federation | 0.092 | Maldives | 0.964 | Macao, China | 0.016 | Ukraine | 0.00600 |
19 | Finland | 0.76 | Maldives | 0.957 | Hong Kong, China | 0.121 | Portugal | 0.091 | Hong Kong, China | 0.963 | Bulgaria | 0.016 | Romania | 0.00590 |
20 | Portugal | 0.76 | Japan | 0.957 | Japan | 0.121 | Finland | 0.091 | Japan | 0.963 | Bahrain | 0.015 | Malaysia | 0.00571 |
21 | New Zealand | 0.75 | Hong Kong, China | 0.957 | Costa Rica | 0.120 | Greece | 0.091 | Ukraine | 0.961 | Japan | 0.015 | Mauritius | 0.00568 |
22 | Brazil | 0.75 | Ukraine | 0.953 | Sri Lanka | 0.120 | Brazil | 0.090 | Mexico | 0.961 | Kuwait | 0.013 | United Kingdom | 0.00555 |
23 | Korea, Republic of | 0.75 | Malaysia | 0.952 | Ukraine | 0.120 | Ireland | 0.090 | Panama | 0.958 | Austria | 0.012 | Hong Kong, China | 0.00531 |
24 | Ireland | 0.74 | Panama | 0.951 | Azerbaijan | 0.120 | Poland | 0.090 | Malaysia | 0.956 | Singapore | 0.012 | Indonesia | 0.00528 |
Group | Countries |
---|---|
Center | United States, Canada, Belgium, Australia, China, Japan, New Zealand, Finland, Mexico, Italy, Republic of Korea, South Africa, United Arab Emirates, India, Turkey, Ecuador, Colombia, Malaysia, Indonesia, Ukraine, Uganda, Romania, Israel, Mauritius, Hong Kong, Costa Rica, Kuwait, Sri Lanka, Panama, Egypt, Lebanon, Pakistan, Morocco, Jordan, Azerbaijan, Georgia, Saudi Arabia, United Republic of Tanzania, Mali, Kazakhstan, Bahamas, Barbados, Seychelles, Trinidad and Tobago, Mongolia, Maldives, United Kingdom, Bulgaria, Latvia, Chile, Uzbekistan, Paraguay, Albania, Bahrain, Macao, Suriname, Angola, Democratic Republic of the Congo, Germany, Nigeria, Antigua and Barbuda, Brazil, France, Congo, Sierra Leone, Nicaragua, Switzerland, Belarus, Armenia, Norway, Russian Federation, Dominica, Austria, Islamic Republic of Iran, Sweden, Madagascar, Guinea, Spain, El Salvador, Benin, Cayman Islands, Grenada, Bolivarian Republic of Venezuela, Togo, Argentina, Philippines, Netherlands, Denmark, Poland, Cambodia, Czech Republic, Bhutan, Portugal, Slovakia, Guyana, Peru, Honduras, Jamaica, Luxembourg, Oman, Croatia, Greece, Slovenia, Singapore, Thailand, Estonia, Ireland, Serbia, Dominican Republic, Bosnia and Herzegovina, Tajikistan, Cyprus, Taiwan Province of China, Tunisia, Hungary, Lithuania, Syrian Arab Republic, San Marino, Malta, Iceland, Zimbabwe, Republic of Moldova, Montenegro, Uruguay, Viet Nam, North Macedonia, Ethiopia, Cuba, Algeria, Nepal, Kyrgyzstan, Bangladesh, Yemen, Plurinational State of Bolivia, Saint Lucia, Myanmar, Eswatini, Lao People’s Democratic Republic, Zambia, Qatar, Namibia, Senegal, Burkina Faso, Guatemala, Kenya, Fiji, Botswana, Haiti, Cameroon, Belize, Monaco, Gambia, Ghana, Mozambique, Iraq, Malawi, Niger, Sudan, Papua New Guinea, Cabo Verde, Palau, Afghanistan, Cote d’Ivoire, Aruba, State of Palestine, Mauritania, Liberia, Andorra, Rwanda, United States Virgin Islands, Gabon, French Polynesia, Turkmenistan, Chad, Comoros, Samoa, Curacao, Saint Vincent and the Grenadines, Equatorial Guinea, Vanuatu, Anguilla, Federated States of Micronesia, Turks and Caicos Islands, Montserrat, Sint Maarten (Dutch Part), Greenland, Faeroe Islands |
Periphery | Puerto Rico, Liechtenstein, Brunei Darussalam, Lesotho, Central African Republic, Libya, American Samoa, Democratic People’s Republic of Korea, Somalia, Burundi, Tonga, Guinea-Bissau, Eritrea, Saint Kitts and Nevis, Solomon Islands, Guadeloupe, Djibouti, Bermuda, Martinique, Cook Islands, Kiribati, Timor-Leste, Sao Tome and Principe, Marshall Islands, New Caledonia, Holy See, British Virgin Islands, South Sudan, Guam, Nauru, Tuvalu, Reunion, French Guiana, Northern Mariana Islands, Gibraltar, Saint Helena, Niue, Falkland Islands (Malvinas), Cocos (Keeling) Islands, Norfolk Island, Wallis and Futuna Islands, British Indian Ocean Territory, Isle of Man, Bonaire, Western Sahara, Pitcairn, Saint Pierre and Miquelon, Tokelau, Christmas Island, Channel Islands, Saba, Wake Island, Johnston Island, Midway Islands, Sint Eustatius |
Largest strongly connected component | United States, Canada, Belgium, Australia, China, Japan, New Zealand, Finland, Mexico, Italy, the Republic of Korea, South Africa, United Arab Emirates, India, Turkey, Ecuador, Colombia, Malaysia, Indonesia, Ukraine, Uganda, Romania, Israel, Mauritius, Hong Kong, Costa Rica, Kuwait, Sri Lanka, Panama, Egypt, Lebanon, Pakistan, Morocco, Jordan, Azerbaijan, Georgia, Saudi Arabia, United Republic of Tanzania, Mali, Kazakhstan, Bahamas, Barbados, Seychelles, Trinidad and Tobago, Mongolia, Maldives, United Kingdom, Bulgaria, Latvia, Chile, Uzbekistan, Paraguay, Albania, Bahrain, Macao, Suriname, Angola, Democratic Republic of the Congo, Germany, Nigeria, Antigua and Barbuda, Brazil, France, Congo, Sierra Leone, Nicaragua, Switzerland, Belarus, Armenia, Norway, Russian Federation, Dominica, Austria, Islamic Republic of Iran, Sweden, Madagascar, Guinea, Spain, El Salvador, Benin, Cayman Islands, Grenada, Bolivarian Republic of Venezuela, Togo, Argentina, Philippines, Netherlands, Denmark, Poland, Cambodia, Czech Republic, Bhutan, Portugal, Slovakia, Guyana, Peru, Honduras, Jamaica, Luxembourg, Oman, Croatia, Greece, Slovenia, Singapore, Thailand, Puerto Rico, Estonia, Ireland, Serbia, Dominican Republic, Bosnia and Herzegovina, Tajikistan, Cyprus, Taiwan (Province of China), Tunisia, Hungary, Lithuania, Syrian Arab Republic, San Marino, Malta, Iceland, Zimbabwe, Republic of Moldova, Montenegro, Uruguay, Viet Nam, North Macedonia, Ethiopia, Cuba, Liechtenstein, Algeria, Nepal, Kyrgyzstan, Brunei Darussalam, Bangladesh, Yemen, Plurinational State of Bolivia, Saint Lucia, Myanmar, Eswatini, Lao People’s Democratic Republic, Zambia, Qatar, Namibia, Senegal, Burkina Faso, Guatemala, Lesotho, Fiji, Botswana, Haiti, Cameroon, Belize, Monaco, Gambia, Central African Republic, Mozambique, Malawi, Niger, Papua New Guinea, Cabo Verde, Palau, Aruba, State of Palestine, Andorra, United States Virgin Islands, French Polynesia, American Samoa, Comoros, Samoa, Curacao, Saint Vincent and the Grenadines, Tonga, Saint Kitts and Nevis, Vanuatu, Solomon Islands, Guadeloupe, Bermuda, Martinique, Cook Islands, Kiribati, Timor-Leste, Anguilla, Federated States of Micronesia, Marshall Islands, New Caledonia, Turks and Caicos Islands, British Virgin Islands, Guam, Reunion, French Guiana, Montserrat, Sint Maarten (Dutch part), Northern Mariana Islands, Niue |
Other 47 strongly connected components | Afghanistan, Cote d’Ivoire, Eritrea, Ghana, Greenland, Holy See, Iraq, Kenya, Democratic People’s Republic of Korea, Liberia, Libya, Rwanda, Sudan, Turkmenistan, Mauritania, Burundi, Chad, Djibouti, Equatorial Guinea, Gabon, Guinea-Bissau, Sao Tome and Principe, Somalia, Bonaire, Falkland Islands (Malvinas), Gibraltar, Tuvalu, South Sudan, Channel Islands, Faeroe Islands, Isle of Man, Nauru, Pitcairn, Saint Helena, Tokelau, Wallis and Futuna Islands, Sint Eustatius, Cocos (Keeling) Islands, British Indian Ocean Territory, Christmas Island, Norfolk Island, Saint Pierre and Miquelon, Western Sahara, Saba, Wake Island, Johnston Island, Midway Islands |
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Parameter | Not Weighted | Weighted |
---|---|---|
Average degree | 70.339 | 70.339 |
Average weighted degree | / | 5,984,652.455 |
Average path length | 1.6579 | 1.6579 |
Diameter | 4 | 4 |
Radius | 2 | 2 |
Density | 0.292 | 0.292 |
Average eccentricity | 2.227 | 2.227 |
Average clustering coefficient | 0.8279 | 0.8279 |
Number of triangles | 423,624 | 423,624 |
Number of paths (length 2) | 1,838,537 | 1,838,537 |
Clustering coefficient (triangle method) | 0.6912 | 0.6912 |
Number of strongly connected components | 48; 1 (195); 47 (1) | 48; 1 (195); 47 (1) |
Number of weakly connected components | 1 | 1 |
Diameter of weakly connected components | 3 | 3 |
Radius of weakly connected components | 2 | 2 |
Eccentricity of largest weakly connected components | 2 (187), 3 (55) | 2 (197), 3 (55) |
Number of nodes in periphery | 55 | 55 |
Number of nodes in center | 187 | 187 |
Number of clusters (Leiden CPM; random seed) | 6 (quality:0.978) | 2 (quality:0.999) |
Modularity (random seed) | 0.09 | 0.52 |
Number of communities | 4 | 6 |
Number of nodes in communities | 75, 71, 83, 13 | 38, 54, 16, 27, 67, 40 |
Community | Countries |
---|---|
1 | South Africa, Uganda, United Republic of Tanzania, Angola, Democratic Republic of the Congo, Nigeria, Congo, Sierra Leone, Benin, Togo, Zimbabwe, Eswatini, Zambia, Namibia, Burkina Faso, Lesotho, Kenya, Botswana, Cameroon, Ghana, Central African Republic, Mozambique, Malawi, Niger, Cote d’Ivoire, Liberia, Rwanda, Gabon, Chad, Burundi, Equatorial Guinea, Sao Tome and Principe, South Sudan, Saint Helena, Saba, Wake Island, Johnston Island, and Midway Islands |
2 | United States, Canada, Mexico, Ecuador, Colombia, Costa Rica, Panama, Bahamas, Barbados, Trinidad and Tobago, Chile, Paraguay, Antigua and Barbuda, Brazil, Nicaragua, Dominica, El Salvador, Cayman Islands, Grenada, Bolivarian Republic of Venezuela, Argentina, Guyana, Peru, Honduras, Jamaica, Puerto Rico, Dominican Republic, Uruguay, Cuba, Plurinational State of Bolivia, Saint Lucia, Guatemala, Haiti, Belize, Aruba, United States Virgin Islands, Saint Vincent and the Grenadines, Saint Kitts and Nevis, Bermuda, Turks and Caicos Islands, Holy See, British Virgin Islands, Montserrat, Gibraltar, Falkland Islands (Malvinas), Greenland, Cocos (Keeling) Islands, Faeroe Islands, British Indian Ocean Territory, Bonaire, Western Sahara, Saint Pierre and Miquelon, Christmas Island, Australia, Sint Eustatius |
3 | China, Japan, Republic of Korea, Hong Kong, Mongolia, Macao, Philippines, Taiwan Province of China, Viet Nam, Myanmar, Palau, Democratic People’s Republic of Korea, Federated States of Micronesia, Marshall Islands, Guam, Northern Mariana Islands |
4 | Australia, New Zealand, Malaysia, Indonesia, Cambodia, Singapore, Thailand, Brunei Darussalam, Lao People’s Democratic Republic, Fiji, Papua New Guinea, Samoa, Tonga, Solomon Islands, Vanuatu, Cook Islands, Kiribati, Timor-Leste, New Caledonia, Nauru, Tuvalu, Niue, Norfolk Island, Wallis and Futuna Islands, Isle of Man, Tokelau, Channel Islands |
5 | Belgium, Finland, Italy, Ukraine, Romania, Israel, Mauritius, Morocco, Mali, Seychelles, Maldives, United Kingdom, Bulgaria, Latvia, Albania, Suriname, Germany, France, Switzerland, Belarus, Norway, Russian Federation, Austria, Sweden, Madagascar, Guinea, Spain, Netherlands, Denmark, Poland, Czech Republic, Portugal, Slovakia, Luxembourg, Croatia, Greece, Slovenia, Estonia, Ireland, Serbia, Bosnia and Herzegovina, Cyprus, Hungary, Lithuania, San Marino, Malta, Iceland, Republic of Moldova, Montenegro, North Macedonia, Liechtenstein, Senegal, Monaco, Gambia, Cabo Verde, Mauritania, Andorra, French Polynesia, Curacao, Guinea-Bissau, Guadeloupe, Martinique, Anguilla, Reunion, French Guiana, Sint Maarten (Dutch part), Pitcairn |
6 | United Arab Emirates, India, Turkey, Kuwait, Sri Lanka, Egypt, Lebanon, Pakistan, Jordan, Azerbaijan, Georgia, Saudi Arabia, Kazakhstan, Uzbekistan, Bahrain, Armenia, Iran, Islamic Republic of Iran, Bhutan, Oman, Tajikistan, Tunisia, Syrian Arab Republic, Ethiopia, Algeria, Nepal, Kyrgyzstan, Bangladesh, Yemen, Qatar, Iraq, Sudan, Afghanistan, Libya, State of Palestine, American Samoa, Turkmenistan, Comoros, Somalia, Eritrea, Djibouti |
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Kostelić, K.; Turk, M. Topology of the World Tourism Web. Appl. Sci. 2021, 11, 2253. https://doi.org/10.3390/app11052253
Kostelić K, Turk M. Topology of the World Tourism Web. Applied Sciences. 2021; 11(5):2253. https://doi.org/10.3390/app11052253
Chicago/Turabian StyleKostelić, Katarina, and Marko Turk. 2021. "Topology of the World Tourism Web" Applied Sciences 11, no. 5: 2253. https://doi.org/10.3390/app11052253
APA StyleKostelić, K., & Turk, M. (2021). Topology of the World Tourism Web. Applied Sciences, 11(5), 2253. https://doi.org/10.3390/app11052253