A Machine Learning-Based 10 Years Ahead Prediction of Departing Foreign Visitors by Reasons: A Case on Türkiye
Abstract
:1. Introduction
- It enhances the knowledge reserve in consumer behavior due to the robust prediction of the reasons for future foreign visitors’ behavior with machine learning, as previous studies are mostly based on descriptive knowledge and past statistical data;
- It develops a multi-dimensional machine-learning model trained effectively with limited uncertain data and can predict the number of departing foreign visitors by their reasons for the next 10 years;
- The developed model can be trained with the data collected from different cities, regions and countries to predict the future arrival reasons of foreign visitors (consumers).
2. Method
- -
- The scope of this data set consists of citizens and foreigners over the age of 14 who arrive to Türkiye for daily and overnight stays and reside abroad;
- -
- The data were obtained through a survey. The questionnaire forms were interviewed face to face four times a year in quarterly periods between 2003 and 2022;
- -
- The reasons for the visitors to come to Türkiye were determined based on the concepts and methods of the World Tourism Organization and Eurostat;
- -
- The model variables are departing foreign visitors by education, health, religion, transit, shopping, business, visiting, accompanying, travel and other reasons;
- -
- Foreign visitors are defined as visitors who do not carry a passport of the Republic of Türkiye and who leave the country through the border gates.
2.1. Input–Output Training Data
2.1.1. Departing Foreign Visitors by Reasons
2.1.2. Percentages of the Departing Foreign Visitors by Reasons
2.2. Fractional-Order Polynomial Prediction Model and Genetic Algorithm-Based Optimization
2.2.1. Fractional-Order Polynomial Prediction Model
2.2.2. Genetic Algorithm-Based Optimization
Algorithm 1: Prediction model optimization with the constrained genetic algorithm. |
Input: |
The parameter upper and lower limits and . |
Initialized cost in Equation (5) and the best cost . |
Initialized probability constant , crossover update rate , mutation update rate , mutation threshold . Initialized and . |
Output: |
Optimized unknown parameters . |
Initialization: |
for to
|
if the current cost is less than the best cost |
Update , . |
end if |
end for |
Main Loop: |
for to
|
for to |
|
end for
|
for to
|
end for |
3. Results
3.1. Parameters of the Genetic Algorithm
3.2. Real and Estimated Results with the Constrained Genetic Algorithm
3.3. Predicted Future Departing Foreign Visitors by Reasons
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
- UNWTO. Why Tourism? Available online: https://www.unwto.org/why-tourism (accessed on 30 July 2022).
- World Travel and Tourism Council. Economic Impact Reports. Available online: https://wttc.org/Research/Economic-Impact (accessed on 30 July 2022).
- UNWTO. 2020: Worst Year in Tourism History with 1 Billion Fewer International Arrivals. Available online: https://www.unwto.org/news/2020-worst-year-in-tourism-history-with-1-billion-fewer-international-arrivals (accessed on 30 July 2022).
- UNWTO. World Tourism Barometer (PPT Version). 2022, 20, 18. Available online: https://webunwto.s3.eu-west-1.amazonaws.com/s3fs-public/2022-06/barometer-ppt-may-2022.pdf?VersionId=quGi1TCs.3M6im3nwprhrY4NtH5_kpsh (accessed on 30 July 2022).
- Hofstede Insights. Compare Countries. Available online: https://www.hofstede-insights.com/product/compare-countries/ (accessed on 30 July 2022).
- World Travel and Tourism Council. Türkiye 2022 Annual Research: Key Highlights. Available online: https://wttc.org/Research/Economic-Impact/country-analysis/country-data (accessed on 30 July 2022).
- Celgin, A.; Gokcu, M.; Gül, S.; Kazdal, A. Turizmin Büyüme ve İstihdam Üzerindeki Etkileri; The Central Bank of the Republic of Türkiye: Ankara, Türkiye, 2021; Volume 2, pp. 1–9. [Google Scholar]
- Republic of Türkiye Ministry of Culture and Tourism. Tourism Statistics 2020. Available online: https://yigm.ktb.gov.tr/TR-232959/arastirma-ve-raporlar.html (accessed on 30 July 2022).
- Turkish Statistical Institute. Tourism Statistics, Quarter IV: October–December and Annually 2021. Available online: https://data.tuik.gov.tr/Bulten/Index?p=Turizm-Istatistikleri-IV.Ceyrek:-Ekim-Aralik-ve-Yillik,-2021-45785 (accessed on 30 July 2022).
- Turkish Statistical Institute. Tourism Statistics, Quarter IV: October–December and Annually 2020. Available online: https://data.tuik.gov.tr/Bulten/Index?p=Turizm-Istatistikleri-IV.Ceyrek:-Ekim-Aralik-ve-Yillik,-2020-37438 (accessed on 30 July 2022).
- Sahu, A.K.; Padhy, R.K.; Dhir, A. Envisioning the future of behavioral decision-making: A systematic literature review of behavioral reasoning theory. Australas. Mark. J. (AMJ) 2020, 28, 145–159. [Google Scholar] [CrossRef]
- Gilal, F.G.; Paul, J.; Gilal, N.G.; GiR, G. The role of organismic integration theory in marketing science: A systematic review and research agenda. Eur. Manag. J. 2022, 40, 208–223. [Google Scholar] [CrossRef]
- Mitrofanova, E.; Pummell, E.K.; Mulrooney, H.M.; Petróczi, A. Using behavioural reasoning theory to explore reasons for dietary restriction: A qualitative study of orthorexic behavioural tendencies in the UK. Front. Psychol. 2021, 12, 685545. [Google Scholar] [CrossRef] [PubMed]
- Westaby, J.D.; Fishbein, M. Factors underlying behavioral choice: Testing a new reasons Theory Approach 1. J. Appl. Soc. Psychol. 1996, 26, 1307–1323. [Google Scholar] [CrossRef]
- Westaby, J.D. Behavioral reasoning theory: Identifying new linkages underlying intentions and behavior. Organ. Behav. Hum. Dec. 2005, 98, 97–120. [Google Scholar] [CrossRef]
- Kozak, M. Comparative analysis of tourist motivations by nationality and destinations. Tour. Manag. 2002, 23, 221–232. [Google Scholar] [CrossRef]
- Turkish Statistical Institute. Statistical Tables, Visitors Exiting by Reason of Arrival, Table and Table Metadata. Available online: https://data.tuik.gov.tr/Bulten/Index?p=Turizm-Istatistikleri-IV.Ceyrek:-Ekim-Aralik-ve-Yillik,-2021-45785 (accessed on 30 July 2022).
- Aydin, B.; Erdogan, B.Z.; Koc, E. The Impact of Novelty Seeking on Intention to Visit a Country: The Mediating Role of Overall Cuisine Image. Adv. Hosp. Tour. Res. (AHTR) 2022, 10, 480–500. [Google Scholar] [CrossRef]
- Birdir, K.; Akgöl, Y. Gastronomy Tourism and Analysis of Gastronomy Experiences of the Foreign Tourists Visiting Türkiye. JBES 2015, 3, 57–68. [Google Scholar]
- Nikjoo, A.H.; Ketabi, M. The role of push and pull factors in the way tourists choose their destination. Anatolia 2015, 26, 588–597. [Google Scholar] [CrossRef]
- Toptaş, A. Sağlık Turizminde Türkiye’nin Önemi ve Tercih Edilme Sebeplerinin Belirlenmesine Yönelik Bir Araştırma. J. Turk. Tour. Res. 2020, 4, 3191–3208. [Google Scholar]
- Atasoy, B. Gastronomy as a Motivation Factor in the Choice of Destination. Mater’s Thesis, Erciyes University, Kayseri, Türkiye, 2019. [Google Scholar]
- Nasibov, İ.; Şen, L.M. Dini Turizmin Kültürel Turizm Talebine Etkisi: İstanbul Örneği. J. Recreat. Tour. Res. 2017, 4, 416–423. [Google Scholar]
- Dalkıran, G.B.; Bayrak, Ö.A. Pandemi Dönemi Turizmde Rusya Pazarı ve Türkiye’ye Yönelik Seyahat Planlarında Sağlık Turizmi Boyutu. BJSS 2020, 6, 221–228. [Google Scholar]
- Akman, M.; Hasipek, S. Yabancı turistlerin Türk mutfağı ile ilgili tutum ve davranışları. J. Nutr. Diet. 1999, 28, 47–53. [Google Scholar]
- Andreu, L.; Kozak, M.; Avci, N.; Cifter, N. Market segmentation by motivations to travel: British tourists visiting Türkiye. J. Travel Tour. Mark. 2005, 19, 1–14. [Google Scholar] [CrossRef]
- Khan, P.W.; Kim, Y.; Byun, Y.C.; Lee, S.J. Influencing Factors Evaluation of Machine Learning-Based Energy Consumption Prediction. Energies 2021, 14, 7167. [Google Scholar] [CrossRef]
- Crivellari, A.; Beinat, E. LSTM-based deep learning model for predicting individual mobility traces of short-term foreign tourists. Sustainability 2020, 12, 349. [Google Scholar] [CrossRef] [Green Version]
- Dimitrov, I.; Zaharieva, N.; Doytchinova, I. Bacterial immunogenicity prediction by machine learning methods. Vaccines 2020, 8, 709. [Google Scholar] [CrossRef]
- Carrino, S.; Guerne, J.; Dreyer, J.; Ghorbel, H.; Schorderet, A.; Montavon, R. Machining quality prediction using acoustic sensors and machine learning. Proceedings 2020, 63, 31. [Google Scholar]
- Arash, H.; Navimipour, N.J.; Unal, M.; Touraj, S. Machine learning applications for COVID-19 outbreak management. Neural Comput. Appl. 2022, 34, 1–36. [Google Scholar]
- Kővári, B.; Hegedüs, F.; Bécsi, T. Design of a reinforcement learning-based lane keeping planning agent for automated vehicles. Appl. Sci. 2020, 10, 7171. [Google Scholar] [CrossRef]
- Erdoğan, B.Z.; Çifci, S.D. Uygulamalı Sentez Bir Sosyal Bilim Olarak Pazarlama. PATU 2015, 1, 1–21. [Google Scholar]
- Sheth, J. New areas of research in marketing strategy, consumer behavior, and marketing analytics: The future is bright. J. Mark. Theory Pract. 2021, 29, 3–12. [Google Scholar] [CrossRef]
- Kotler, P.; Armstrong, G. Principles of Marketing; Global Ed.; Pearson Education Limited: Essex, UK, 2021; p. 26. [Google Scholar]
- Kozak, M.; Baloglu, S. Managing and Marketing Tourist Destinations: Strategies to Gain a Competitive Edge, 1st ed.; Routledge: New York, NY, USA, 2011; p. 3. [Google Scholar]
- Koc, E. Cross-Cultural Aspects of Tourism and Hospitality: A Services Marketing and Management Perspective, 1st ed.; Routledge: New York, NY, USA, 2021; pp. 8–9. [Google Scholar]
- Koc, E.; Ayyildiz, A.Y. Culture’s Influence on the Design and Delivery of the Marketing Mix Elements in Tourism and Hospitality. Sustainability 2021, 13, 11630. [Google Scholar] [CrossRef]
- Uner, M.M.; Karatepe, O.M.; Cavusgil, S.T.; Kucukergin, K.G. Does a highly standardized international advertising campaign contribute to the enhancement of destination image? Evidence from Türkiye. J. Hosp. Tour. Insights, 2022; ahead-of-print. [Google Scholar]
- Kozak, M.; Buhalis, D. Cross–border tourism destination marketing: Prerequisites and critical success factors. J. Destin. Mark. Manag. 2019, 14, 100392. [Google Scholar] [CrossRef]
- Porter, M.E. Competitive Advantage Creating and Sustaining Superior Performance, 1st ed.; The Free Press: New York, NY, USA, 1985; pp. 11–25. [Google Scholar]
- Porter, M.E. Competitive strategy. Meas. Bus. Excell. 1997, 1, 12–17. [Google Scholar] [CrossRef]
- Treacy, M.; Wiersema, F. Customer intimacy and other value disciplines. Harv. Bus. Rev 1993, 71, 84–93. [Google Scholar]
- Barca, M.; Akdeve, E.; Balay, İ.G. Türkiye sağlık turizm sektörünün analizi ve strateji önerileri. İşletme Araşt. Derg. 2013, 5, 64–92. [Google Scholar]
- Uzkurt, C.; Kimzan, H.S.; Yılmaz, C. A case study of the mediating role of innovation on the relationship between environmental uncertainty, market orientation, and firm performance. Int. J. Innov. Technol. Manag. 2016, 13, 1750003. [Google Scholar] [CrossRef]
Parameters | Descriptions |
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Initialized cost function. | |
Probability constant. | |
Mutation threshold. | |
Mutation update rate. | |
Search duration. | |
Total parameter space. |
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Tutsoy, O.; Tanrikulu, C. A Machine Learning-Based 10 Years Ahead Prediction of Departing Foreign Visitors by Reasons: A Case on Türkiye. Appl. Sci. 2022, 12, 11163. https://doi.org/10.3390/app122111163
Tutsoy O, Tanrikulu C. A Machine Learning-Based 10 Years Ahead Prediction of Departing Foreign Visitors by Reasons: A Case on Türkiye. Applied Sciences. 2022; 12(21):11163. https://doi.org/10.3390/app122111163
Chicago/Turabian StyleTutsoy, Onder, and Ceyda Tanrikulu. 2022. "A Machine Learning-Based 10 Years Ahead Prediction of Departing Foreign Visitors by Reasons: A Case on Türkiye" Applied Sciences 12, no. 21: 11163. https://doi.org/10.3390/app122111163
APA StyleTutsoy, O., & Tanrikulu, C. (2022). A Machine Learning-Based 10 Years Ahead Prediction of Departing Foreign Visitors by Reasons: A Case on Türkiye. Applied Sciences, 12(21), 11163. https://doi.org/10.3390/app122111163