Consumer behaviour in e-Tourism: Exploring new applications of machine learning in tourism studies

Digital markets have altered how economic agents interact and have changed the behaviour of tourists. In addition, the COVID-19 pandemic has shown that it is necessary to constantly monitor the evolution of digital consumer behaviour and the factors that influence it, as they are dynamic elements that evolve over time. This paper analyses digital inequalities and validates the main factors influencing tourists to book online tourism services. This research uses a set of microdata with 69,752 and 23,779 observations to analyse the booking mode of accommodation and transportation services, respectively, obtained from the Resident Travel Survey of the National Statistics Institute of Spain during the period 2016-2021. The article confirms variations in the online consumer profile and in the trip's characteristics. One of the most relevant findings is the narrowing of the generational gap in the online contracting of tourist services. However, there are remaining digital inequalities, such as regional inequalities and others based on the education level and income of tourists. It is also highlighted that different types of trips, depending on the destination, the type of accommodation or transport have a different propensity to be booked through digital purchase channels. The accessibility to big data sources and recent advances in machine learning models have also made the methodologies for analysing digital consumer behaviour evolve and must be incorporated into tourism studies. This study compares the predictive performance of different methodologies in the context of e Tourism. In particular, we evaluate the potential predictive power that could be obtained using machine learning techniques to explain consumer behaviour in e-Tourism and use it as a benchmark to compare it with the results obtained using traditional statistical methods. The selected predictive evaluation metrics show that the logistic regression statistical model outperforms the predictive power of the Multilayer Perceptron neural network and presents values very close to the maximum predictive power achieved by the Random Forest algorithm.

[1]  Adrián Mendieta-Aragón Cambios en el comportamiento turístico tras la COVID-19: hacia un nuevo perfil del turista y del viaje de ocio en España , 2022, Revista Electrónica de Comunicaciones y Trabajos de ASEPUMA.

[2]  Ahmed Alsayat Customer decision-making analysis based on big social data using machine learning: a case study of hotels in Mecca , 2022, Neural Computing and Applications.

[3]  Asyraf Afthanorhan,et al.  Restaurant Diners’ Switching Behavior During the COVID-19 Pandemic: Protection Motivation Theory , 2022, Frontiers in Psychology.

[4]  Hoang Lan Vu,et al.  Analysis of input set characteristics and variances on k-fold cross validation for a Recurrent Neural Network model on waste disposal rate estimation. , 2022, Journal of environmental management.

[5]  Heesup Han,et al.  The Impact of COVID-19 on the Food Supply Chain and the Role of E-Commerce for Food Purchasing , 2022, Sustainability.

[6]  Julia M. Núñez Tabales,et al.  Nuevos tipos de alojamientos: apartamentos turísticos y determinantes de valoración en el precio de la estancia , 2022, Investigaciones Turísticas.

[7]  Mohammad Ghaedi Tourists’ Booking Behavior: Online Social Media Perspectives , 2022, Journal of Promotion Management.

[8]  J. Váchal,et al.  Analysis of E-Consumer Behavior During the COVID-19 Pandemic , 2021, EAI/Springer Innovations in Communication and Computing.

[9]  H. Sidanti,et al.  Traditional Market Transformation Into Digital Market (Indonesian Traditional Market Research Library) , 2021, International Journal of Science, Technology & Management.

[10]  Marcello M. Mariani,et al.  Big data and analytics in hospitality and tourism: a systematic literature review , 2021, International Journal of Contemporary Hospitality Management.

[11]  Y. Prasetyo,et al.  Consumer Behavior in Clothing Industry and Its Relationship with Open Innovation Dynamics during the COVID-19 Pandemic , 2021, Journal of Open Innovation: Technology, Market, and Complexity.

[12]  Roman Egger,et al.  A machine learning approach to cluster destination image on Instagram , 2021 .

[13]  Domenico Sardanelli,et al.  Exploring the role of the Amazon effect on customer expectations: An analysis of user‐generated content in consumer electronics retailing , 2021, Journal of Consumer Behaviour.

[14]  Tahir Mehmood,et al.  Regularized Feature Selection in Categorical PLS for Multicollinear Data , 2021 .

[15]  Lei Liu,et al.  Does COVID-19 Affect the Behavior of Buying Fresh Food? Evidence from Wuhan, China , 2021, International journal of environmental research and public health.

[16]  Samuel Fosso-Wamba,et al.  Online consumer resilience during a pandemic: An exploratory study of e-commerce behavior before, during and after a COVID-19 lockdown , 2021, Journal of Retailing and Consumer Services.

[17]  José Ángel Martín-Baos,et al.  Revisiting kernel logistic regression under the random utility models perspective. An interpretable machine-learning approach , 2021 .

[18]  Caroline Scarles,et al.  Advancements in technology and digital media in tourism , 2021 .

[19]  Jinsoo Hwang,et al.  A Discrete Choice Experimental Approach to Understand Sports Event Tourists’ In-Stadium Beer Consumption Preferences , 2021 .

[20]  H. Dang,et al.  Predicting Contract Participation in the Mekong Delta, Vietnam: A Comparison Between the Artificial Neural Network and the Multinomial Logit Model , 2021, Journal of Agricultural & Food Industrial Organization.

[21]  Zhong-fei Li,et al.  The impact of COVID-19 on industry-related characteristics and risk contagion , 2021, Finance Research Letters.

[22]  Dipasha Sharma,et al.  Online food delivery portals during COVID-19 times: an analysis of changing consumer behavior and expectations , 2020 .

[23]  Jashwini J. Narayan,et al.  Exploring consumer behavior to purchase travel online in Fiji and Solomon Islands? An extension of the UTAUT framework , 2020 .

[24]  Mingming Hu,et al.  Data source combination for tourism demand forecasting , 2020, Tourism Economics.

[25]  Qi Li,et al.  Exploring the Continuance Usage Intention of Travel Applications in the Case of Chinese Tourists , 2020, Journal of Hospitality & Tourism Research.

[26]  Teresa Garín-Muñoz,et al.  Consumer engagement in e-Tourism: Micro-panel data models for the case of Spain , 2020, Tourism Economics.

[27]  Pascal Van Hentenryck,et al.  Prediction and behavioral analysis of travel mode choice: A comparison of machine learning and logit models , 2020 .

[28]  J. Sheth Impact of Covid-19 on consumer behavior: Will the old habits return or die? , 2020, Journal of Business Research.

[29]  U. Gretzel,et al.  e-Tourism beyond COVID-19: a call for transformative research , 2020, J. Inf. Technol. Tour..

[30]  H. Nguyen,et al.  Online Book Shopping in Vietnam: The Impact of the COVID-19 Pandemic Situation , 2020, Publishing Research Quarterly.

[31]  P. Mealy,et al.  Supply and demand shocks in the COVID-19 pandemic: an industry and occupation perspective , 2020, Oxford Review of Economic Policy.

[32]  W. Coetzee,et al.  A critique of the progress of eTourism technology acceptance research: time for a hike? , 2019, Journal of Hospitality and Tourism Technology.

[33]  M. Ellies-Oury,et al.  Statistical model choice including variable selection based on variable importance: A relevant way for biomarkers selection to predict meat tenderness , 2019, Scientific Reports.

[34]  A. Hood,et al.  Gender , 2019, Textile History.

[35]  Kevin W. Walker,et al.  Application of adaptive boosting (AdaBoost) in demand-driven acquisition (DDA) prediction: A machine-learning approach , 2019, The Journal of Academic Librarianship.

[36]  Chang Liu,et al.  Forecasting tourism demand using search query data: A hybrid modelling approach , 2019, Tourism Economics.

[37]  D. Fudenberg,et al.  Measuring the Completeness of Economic Models , 2019, Journal of Political Economy.

[38]  Enrique Bigné,et al.  Harnessing stakeholder input on Twitter: A case study of short breaks in Spanish tourist cities , 2019, Tourism Management.

[39]  Josep A. Ivars-Baidal,et al.  Smart destinations and tech-savvy millennial tourists: hype versus reality , 2019, Tourism Review.

[40]  Claudia Sevilla-Sevilla,et al.  Progress in information technology and tourism management: 30 years on and 20 years after the internet - Revisiting Buhalis & Law's landmark study about eTourism , 2018, Tourism Management.

[41]  W. Cai,et al.  A variable importance criterion for variable selection in near-infrared spectral analysis , 2018, Science China Chemistry.

[42]  Hannes Werthner,et al.  IT and tourism: still a hot topic, but do not forget IT , 2018, J. Inf. Technol. Tour..

[43]  Heikki Karjaluoto,et al.  Consumers' acceptance of information and communications technology in tourism: A review , 2017, Telematics Informatics.

[44]  Francisco Liébana-Cabanillas,et al.  Predictive and explanatory modeling regarding adoption of mobile payment systems , 2017 .

[45]  Max N. Greene,et al.  NEURAL Networks and Consumer Behavior: NEURAL Models, Logistic Regression, and the Behavioral Perspective Model , 2017, The Behavior Analyst.

[46]  G. Coenders,et al.  Trip Characteristics and Dimensions of Internet Use for Transportation, Accommodation, and Activities Undertaken at Destination , 2016 .

[47]  Roland Schegg,et al.  The interactive effects of online reviews on the determinants of Swiss hotel performance: a neural network analysis. , 2015 .

[48]  Paulo Duarte,et al.  An integrative model of consumers' intentions to purchase travel online , 2015 .

[49]  Alessandro Inversini,et al.  Selling rooms online: the use of social media and online travel agents , 2014 .

[50]  Paulo Duarte,et al.  Online travel purchasing: A literature review , 2013 .

[51]  Teresa Garín-Muñoz,et al.  Internet Usage for Travel and Tourism: The Case of Spain , 2011 .

[52]  C. Vogt,et al.  Online Information Search Strategies: A Focus On Flights and Accommodations , 2010 .

[53]  R. Law,et al.  Progress in information technology and tourism management: 20 years on and 10 years after the Internet - the state of eTourism research. , 2008 .

[54]  Yang Liu,et al.  An introduction to decision tree modeling , 2004 .

[55]  L. Breiman Random Forests , 2001, Encyclopedia of Machine Learning and Data Mining.

[56]  Cathy H. C. Hsu,et al.  The Use of Logit Analysis to Enhance Market Segmentation Methodology , 1999 .

[57]  Ron Kohavi,et al.  Wrappers for Feature Subset Selection , 1997, Artif. Intell..

[58]  Fred D. Davis Perceived Usefulness, Perceived Ease of Use, and User Acceptance of Information Technology , 1989, MIS Q..

[59]  I. Ajzen,et al.  Belief, Attitude, Intention, and Behavior: An Introduction to Theory and Research , 1977 .

[60]  Frank Rosenblatt,et al.  PRINCIPLES OF NEURODYNAMICS. PERCEPTRONS AND THE THEORY OF BRAIN MECHANISMS , 1963 .

[61]  David Boto-García,et al.  Tourists’ preferences for hotel booking , 2021 .

[62]  M. Mursalov,et al.  Consumer behavior in digital era: impact of COVID 19 , 2021, Marketing and Management of Innovations.

[63]  F. G. Reverté,et al.  Digital Divide in E-Tourism , 2021, Handbook of e-Tourism.

[64]  Mirjana Pejic Bach,et al.  Editorial: Electronic Commerce in the Time of Covid-19 - Perspectives and Challenges , 2021, J. Theor. Appl. Electron. Commer. Res..

[65]  Natnaporn Aeknarajindawat The Factors Influencing Tourists’ Online Hotel Reservations in Thailand: An Empirical Study , 2020 .

[66]  W. Coetzee,et al.  Acceptance and Adoption of eTourism Technologies , 2020 .

[67]  Mehdi M. Kashani Destination , 2019, the minnesota review.

[68]  Bradley S. Price,et al.  Using Machine Learning To Cocreate Value Through Dynamic Customer Engagement In A Brand Loyalty Program , 2019 .

[69]  Lin Tang,et al.  Forecasting tourism demand by extracting fuzzy Takagi-Sugeno rules from trained SVMs , 2016, CAAI Trans. Intell. Technol..

[70]  N. Desplas,et al.  Parallel analysis between e-tourism and e-government: evolution and trends. , 2014 .

[71]  Dimitrios Buhalis,et al.  eTourism: critical information and communication technologies for tourism destinations. , 2011 .

[72]  Dongsong Zhang,et al.  Predicting and explaining patronage behavior toward web and traditional stores using neural networks: a comparative analysis with logistic regression , 2006, Decis. Support Syst..

[73]  Werner Winiwarter,et al.  Electronic business in tourism , 2004, Int. J. Electron. Bus..

[74]  H. Werthner,et al.  State of the Art in eTourism , 2002 .

[75]  Icek Ajzen,et al.  From Intentions to Actions: A Theory of Planned Behavior , 1985 .

[76]  K. Tomita On the island of La Palma. , 1985 .

[77]  A. A. Mullin,et al.  Principles of neurodynamics , 1962 .