tourist drivers of potential accident risks. For this
goal, various tools were used: Matlab’s, Weka,
ArcGIS, Google earth and Fusion. The output of this
analysis was used to develop a prototype application
to warn tourist of potential accident risks based on
contextual information that could be obtained from
gps coordinates and user’s characteristics.
Our future work aims to fully realise the mobile
application and integrate its functionality with web
services such as weather and temperature, to enhance
the contextual information that describe driver’s
situation. This in combination with the knowledge
distilled from this study will provide the means to
dynamically calculate the risk of accident occurrence.
An evaluation study will follow to assess the
effectiveness of the system on tourism safety, plus the
distractive effect on drivers.
REFERENCES
Anderberg M. Cluster analysis for applications, 1973,
Academic Press.
Gregoriades A, Mouskos K, 2013. Black spots
identification through a Bayesian Networks
quantification of accident risk index. Transportation
Research Part C 28, 28-43.
Bayardo Jr, Roberto J. (1998). Efficiently mining long
patterns from databases. ACM SIGMOD, 27 (2).
Bentley et al., 2001, Recreational tourism injuries among
visitors to New Zealand: an exploratory analysis using
hospital discharge data, Tourism Management, 22
(2001), pp. 373–381.
Berry MJA, Linoff G. Data Mining Techniques: For
Marketing, Sales, and Customer Support. New York,
NY, USA: Wiley, 1997. 2135 DOGRU and
SUBAS¸I/Turk J Elec Eng & Comp Sci.
Chen, W. and Jovanis P. (2002) Method for identifying
factors contributing to driver-injury severity in traffic
crashes, Transportation Research Record 1717 1-9.
Depaire B, Wets G, Vanhoof K. Traffic accident
segmentation by means of latent class clustering.
Accident Anal Prev 2008; 40: 1257–1266.
Frawley, W. J., Piatetsky-Shapiro, G., Matheus, C. J.,
Knowledge Discovery in Databases, AAAI/MIT Press,
1-27(1991).
Howard, 2009, Risky business? Asking tourists what
hazards they actually encountered in Thailand, Tourism
Management, 30 (2009), pp. 359–365.
Sun J, Jian Sun, 2015. A dynamic Bayesian network model
for real-time crash prediction using traffic speed
conditions data. Transportation Research Part C 54,
176-186.
Kassawat S., Sunya S, Vatanavongs R, 2015. Integration of
Spatial Models for Web-based Risk Assessment of
Road Accident. Engineering and Physical Sciences 8,
671.
Lee, C., Saccomanno, F. and Hellinga B. (2002). Analysis
of Crash Precursors on Instrumented Freeways,
Proceedings of the Transportation Research Board,
Washington D.C.
Liu, Y, Kiang, M., Brusco, M. (2012). A unified framework
for market segmentation and its applications, Expert
Systems with Applications, 39, (11), 1 September,
10292–10302.
Mahdi A., Ali N, 2013. Presentation of clustering-
classification heuristic method for improvement
accuracy in classification of severity of road accidents
in Iran. Safety Science 60, 142-150.
Miao Chong, Ajith Abraham and Marcin Paprzycki, 2005.
Traffic Accident Data Mining Using Machine Learning
Paradigms. Informatica 29, 89–98.
Kwon H, Wonjong Rheeb, Yoonjin Yoona, 2015.
Application of classification algorithms for analysis of
road safety risk factor dependencies. Accident Analysis
and Prevention 75, 1-15.
Page, Meyer, 1996, Tourist accidents an exploratory
analysis, Annals of Tourism Research, 23 (3) (1996),
pp. 666–690.
Liu P, 2009. A self-organizing feature maps and data
mining based decision support system for liability
authentications of traffic crashes. Neurocomputing 72,
2902-2908.
Rossello, Jaume, Saenz-de-Miera, 2011, Road accidents
and tourism: The case of the Balearic Islands (Spain),
Accident Analysis and Prevention. 43(3),675-683.
Smith, W. R. (1956). Product differentiation and market
segmentation as alternative marketing strategies. The
Journal of Marketing, 21(1), 3-8.
Tambouratzis T, Souliou D, Chalikias M and Gregoriades
A., Combining probabilistic neural networks and
decision trees for maximally accurate and efficient
accident prediction, IJCNN, Barcelona, 2010, pp. 1-8.
WHO. Global Status Report on Road Safety 2015.
Yiannis G, , Golias J, Eleonora Papadimitriou, 2007,
Accident risk of foreign drivers in various road
environments, Journal of Safety Research, Vol 38,4,
pp471–480.