J 2024

Understanding customer's online booking intentions using hotel big data analysis

CHALUPA, Štěpán and Martin PETŘÍČEK

Basic information

Original name

Understanding customer's online booking intentions using hotel big data analysis

Authors

CHALUPA, Štěpán and Martin PETŘÍČEK

Edition

Journal of Vacation Marketing, Sage, 2024, 1356-7667

Other information

Language

English

Type of outcome

Článek v odborném periodiku

Confidentiality degree

není předmětem státního či obchodního tajemství

Organization unit

University College Prague – University of International Relations and Institute of Hospitality Management and Economics, Ltd.

DOI

http://dx.doi.org/10.1177/13567667221122107

UT WoS

000847837600001

Keywords in English

Price elasticity of demand, hotel market segmentation, cluster analysis, hospitality marketing, hospitality e-commerce

Tags

International impact, Reviewed
Změněno: 4/6/2024 09:20, Ing. Štěpán Chalupa, Ph.D.

Abstract

V originále

The presented article focuses on the issue of customer segmentation in the hospitality industry and its use for price optimisation. To identify the market segments article uses the Two-Step cluster analysis. The analysis was based on the seven variables (length of stay, average room rate, distribution channel, reservation day, day of arrival, lead time and payment conditions). Six clusters were identified as following segments: Corporates, Early Bird Bookers, Last Minute Bookers, Product Seekers, Values Seekers and Last Minute Bookers. To optimise the price for these segments, article works with the coefficient of price elasticity of demand for the presented market segments. The price elasticity of demand is measured by the log-log regression analysis. Data were colected from the four-star hotel in Prague, Czech Republic and analysis is based on more than 9000 transactions. Last minute bookers segment was the only one with the positive coefficient of price elasticity and has the lowest value of lead time (9,27 in average). Product seekers have the highest coefficient of price elasticity (−3,413) and highest average room rate (3573 CZK in average). Early bird bookers, Long time stayers, Corporates and Value seekers was identified as pricely inelastic.
Displayed: 2/11/2024 22:57