Unsupervised Hierarchical Clustering Approach for Tourism Market Segmentation Based on Crowdsourced Mobile Phone Data

Understanding tourism related behavior and traveling patterns is an essential element of transportation system planning and tourism management at tourism destinations. Traditionally, tourism market segmentation is conducted to recognize tourist’s profiles for which personalized services can be provided. Today, the availability of wearable sensors, such as smartphones, holds the potential to tackle data collection problems of paper-based surveys and deliver relevant mobility data in a timely and cost-effective way. In this paper, we develop and implement a hierarchical clustering approach for smartphone geo-localized data to detect meaningful tourism related market segments. For these segments, we provide detailed insights into their characteristics and related mobility behavior. The applicability of the proposed approach is demonstrated on a use case in the Province of Zeeland in the Netherlands. We collected data from 1505 users during five months using the Zeeland app. The proposed approach resulted in two major clusters and four sub-clusters which we were able to interpret based on their spatio-temporal patterns and the recurrence of their visiting patterns to the region.

[1]  Isabelle Frochot,et al.  A benefit segmentation of tourists in rural areas: a Scottish perspective , 2005 .

[2]  David J. Keeling Transportation geography: new directions on well-worn trails , 2007 .

[3]  Sidharta Gautama,et al.  Policy 2.0 Platform for Mobile Sensing and Incentivized Targeted Shifts in Mobility Behavior , 2016, Sensors.

[4]  Frank Witlox,et al.  Integrating Big Data into a Sustainable Mobility Policy 2.0 Planning Support System , 2016 .

[5]  Sidharta Gautama,et al.  Crowdsourcing mobility insights: reflection of attitude based segments on high resolution mobility behaviour data , 2016 .

[6]  Frank Witlox,et al.  Spatial context mining approach for transport mode recognition from mobile sensed big data , 2017, Comput. Environ. Urban Syst..

[7]  D. Istance Organization for Economic Co-operation and Development , 1966, Nature.

[8]  Ling Li,et al.  Big data in tourism research: A literature review , 2018, Tourism Management.

[9]  H. A. Eiselt,et al.  Exploratory research of tourist motivations and planning , 2004 .

[10]  A. Gutiérrez,et al.  The Determinants of Tourist Use of Public Transport at the Destination , 2016 .

[11]  Sebastian Raschka,et al.  Python Machine Learning , 2015 .

[12]  Thomas B. Montzka Investigating the Potential of Using SOM on Audit Changed Trades , 2018 .

[13]  Tommy W. S. Chow,et al.  Clustering Heterogeneous Data with k-Means by Mutual Information-Based Unsupervised Feature Transformation , 2015, Entropy.

[14]  Lourdes Molera,et al.  Profiling segments of tourists in rural areas of South-Eastern Spain , 2007 .

[15]  Choong-Ki Lee,et al.  Push and Pull Relationships , 2002 .

[16]  P. Rousseeuw Silhouettes: a graphical aid to the interpretation and validation of cluster analysis , 1987 .

[17]  R. Ahas,et al.  The use of tracking technologies in tourism research: the first decade , 2016 .

[18]  Ingrid Moerman,et al.  Pattern mining in tourist attraction visits through association rule learning on Bluetooth tracking data: A case study of Ghent, Belgium , 2014 .

[19]  A. M. Sheela,et al.  A crowdsourced valuation of recreational ecosystem services using social media data: An application to a tropical wetland in India. , 2018, The Science of the total environment.

[20]  Kai Lu,et al.  Metric-Based Auto-Instructor for Learning Mixed Data Representation , 2018, AAAI.

[21]  Yi Peng,et al.  Evaluation of clustering algorithms for financial risk analysis using MCDM methods , 2014, Inf. Sci..

[22]  Sidharta Gautama,et al.  Smart City Mobility Application—Gradient Boosting Trees for Mobility Prediction and Analysis Based on Crowdsourced Data , 2015, Sensors.

[23]  A. Morrison,et al.  The Tourism System: An Introductory Text , 1985 .

[24]  Jonathan Z. Bloom,et al.  MARKET SEGMENTATION: A Neural Network Application , 2005 .

[25]  Anil K. Jain,et al.  Validity studies in clustering methodologies , 1979, Pattern Recognit..

[26]  Tong Guo,et al.  CrowdTravel: scenic spot profiling by using heterogeneous crowdsourced data , 2017, Journal of Ambient Intelligence and Humanized Computing.

[27]  Petra Perner,et al.  Data Mining - Concepts and Techniques , 2002, Künstliche Intell..

[28]  L. Jia,et al.  Forest Recreation Opportunity Spectrum in the Suburban Mountainous Region of Beijing , 2012 .

[29]  Tijs Neutens,et al.  Analysing spatiotemporal sequences in Bluetooth tracking data , 2012 .

[30]  Qingquan Li,et al.  Understanding the Impacts of Human Mobility on Accessibility Using Massive Mobile Phone Tracking Data , 2018 .

[31]  R. Ahas,et al.  Seasonal tourism spaces in Estonia: Case study with mobile positioning data , 2007 .

[32]  D. Getz The tourism system: An introductory text: By Robert Christie Mill and Alastair M. Morrison, Prentice-Hall, Inc. (Englewood Cliffs, NJ 07632, USA) ISBN 0-13-925645-8, 1985, XX + 457 pp. (tables, illustrations, index) $25.95 (cloth) , 1986 .