Modeling the Fluctuation Patterns of Monthly Inbound Tourist Flows to China: A Complex Network Approach

A thorough understanding of the fluctuations of tourist flows provides useful insights concerning the nature of tourist demand. This study aims to investigate the fluctuation patterns and dynamics of inbound tourist flows to China using a complex network approach. Several measures, such as the network topological parameters of degree and degree distribution, betweenness centrality, and shortest path length, are utilized to discover important fluctuation patterns and the transition distance. Based on the empirical results, six important fluctuation patterns of inbound tourist flows to China are recognized. These fluctuation patterns are important intermediaries in the process of transformation of the fluctuation patterns and can be viewed as a prelude to changes in the inbound tourist flows. The value of 3.38 found for the average transition distance suggests that the transformation occurs approximately every three to four quarters. These findings are useful for understanding the inherent laws and transformations governing fluctuations in tourist flows.

[1]  Michael McAleer,et al.  Modelling multivariate international tourism demand and volatility , 2005 .

[2]  F. Vaccina,et al.  Seasonal Pattern and Amplitude – a Logical Framework to Analyse Seasonality in Tourism: An Application to Bed Occupancy in Sicilian Hotels , 2011 .

[3]  Patrik Gustavsson,et al.  The Impact of Seasonal Unit Roots and Vector ARMA Modelling on Forecasting Monthly Tourism Flows , 2001 .

[4]  Lucas Lacasa,et al.  From time series to complex networks: The visibility graph , 2008, Proceedings of the National Academy of Sciences.

[5]  Yang Yang,et al.  Spatial Distribution of Tourist Flows to China's Cities , 2013 .

[6]  SooCheong Jang,et al.  Mitigating tourism seasonality: A Quantitative Approach , 2004 .

[7]  J. Fourie,et al.  The impact of mega-sport events on tourist arrivals , 2011 .

[8]  Stephen F. Witt,et al.  Forecasting Tourism Using Univariate and Multivariate Structural Time Series Models , 2001 .

[9]  Gang Li,et al.  Forecasting tourist arrivals using time-varying parameter structural time series models , 2011 .

[10]  Haiyan Song,et al.  Forecasting international tourist flows to Macau , 2006 .

[11]  Haiyan Song,et al.  Global Financial/Economic Crisis and Tourist Arrival Forecasts for Hong Kong , 2010 .

[12]  Rob Law,et al.  Modeling and forecasting tourism demand for arrivals with stochastic nonstationary seasonality and intervention. , 2002 .

[13]  Haiyan Song,et al.  Recent Developments in Econometric Modeling and Forecasting , 2005 .

[14]  George Athanasopoulos,et al.  Multivariate Exponential Smoothing for Forecasting Tourist Arrivals , 2012 .

[15]  Ping Li,et al.  Extracting hidden fluctuation patterns of Hang Seng stock index from network topologies , 2007 .

[16]  Haiyan Song,et al.  Tourism demand modelling and forecasting—A review of recent research , 2008 .

[17]  V. Cho A comparison of three different approaches to tourist arrival forecasting , 2003 .

[18]  I. Moosa,et al.  Seasonal Behaviour of Monthly International Tourist Flows: Specification and Implications for Forecasting Models , 2001 .

[19]  Wang Bing-Hong,et al.  An approach to Hang Seng Index in Hong Kong stock market based on network topological statistics , 2006 .

[20]  Vincent Cho,et al.  A study on the temporal dynamics of tourism demand in the Asia Pacific Region. , 2009 .

[21]  M. McAleer,et al.  Modelling international tourism demand and volatility in small island tourism economies , 2005 .

[22]  G. Caldarelli,et al.  Networks of equities in financial markets , 2004 .

[23]  L. A. Gil-Alana,et al.  Modelling international monthly arrivals using seasonal univariate long-memory processes , 2005 .

[24]  Antoni Riera Font,et al.  The economic determinants of seasonal patterns , 2004 .

[25]  Bing Pan,et al.  Predicting Hotel Demand Using Destination Marketing Organization’s Web Traffic Data , 2014 .

[26]  John T. Coshall Time Series Analyses of UK Outbound Travel by Air , 2006 .

[27]  Michael McAleer,et al.  MONTHLY SEASONAL VARIATIONS: ASIAN TOURISM TO AUSTRALIA , 2001 .

[28]  Luis A. Gil-Alana,et al.  Persistence in the Short- and Long-Term Tourist Arrivals to Australia , 2011 .

[29]  Dogan Gursoy,et al.  An Examination of Tourist Arrivals Dynamics Using Short-Term Time Series Data: A Space—Time Cluster Approach , 2013 .

[30]  Russell Smyth,et al.  Asian Financial Crisis, Avian Flu and Terrorist Threats: Are Shocks to Malaysian Tourist Arrivals Permanent or Transitory? , 2009 .

[31]  Gang Li,et al.  Tourism Demand Forecasting: A Time Varying Parameter Error Correction Model , 2006 .

[32]  Hsiao-Ping Chu,et al.  Are Visitor Arrivals to China Stationary? An Empirical Note , 2014 .

[33]  Yu-Wei Chang,et al.  A Seasonal ARIMA Model of Tourism Forecasting: The Case of Taiwan , 2010 .

[34]  Haizhong An,et al.  The role of fluctuating modes of autocorrelation in crude oil prices , 2014 .

[35]  Kevin K. F. Wong,et al.  Tourism forecasting: To combine or not to combine? , 2007 .

[36]  Lu Jiang,et al.  Network topologies of Shanghai stock index , 2010 .

[37]  A. Vergori Forecasting Tourism Demand: The Role of Seasonality , 2012 .

[38]  J. Higham,et al.  Tourism, sport and seasons: the challenges and potential of overcoming seasonality in the sport and tourism sectors , 2002 .

[39]  Modeling Japanese Tourism Demand for Asian Destinations: A Dynamic AIDS Approach , 2014 .

[40]  Kamran Shahanaghi,et al.  Tourist arrival forecasting by evolutionary fuzzy systems. , 2011 .

[41]  Ilde Rizzo,et al.  Tourism seasonality in cultural destinations: Empirical evidence from Sicily , 2011 .