We suggest a nonlinear time series methodology to model the (last-minute) price adjustments that hotels active in the online market make to adapt their early-booking rates in response to unpredictable fluctuations in demand. We use this approach to reverse-engineer the pricing strategies of six hotels in Milan, Italy, each with different features and services. The results reveal that the hotels’ ability to align lastminute adjustments with early-booking decisions and account for stochastic demand seasonality varies depending on factors such as size, star rating, and brand affiliation. As a primary empirical finding, we show that the autocorrelations of the first four moments of the last-minute price adjustment can be used to gain crucial insights into the hoteliers’ pricing strategies. Scaling up this approach has the potential to equip policymakers in smart destinations with a reliable and transparent tool for the real-time monitoring of demand dynamics.

Reverse engineering the last-minute on-line pricing practices: an application to hotels / Guizzardi, Andrea; Ballestra, Luca Vincenzo; D’Innocenzo, Enzo. - In: STATISTICAL METHODS & APPLICATIONS. - ISSN 1618-2510. - ELETTRONICO. - N/A:(2024), pp. N/A-N/A. [10.1007/s10260-024-00751-3]

Reverse engineering the last-minute on-line pricing practices: an application to hotels

Guizzardi, Andrea;Ballestra, Luca Vincenzo;D’Innocenzo, Enzo
2024

Abstract

We suggest a nonlinear time series methodology to model the (last-minute) price adjustments that hotels active in the online market make to adapt their early-booking rates in response to unpredictable fluctuations in demand. We use this approach to reverse-engineer the pricing strategies of six hotels in Milan, Italy, each with different features and services. The results reveal that the hotels’ ability to align lastminute adjustments with early-booking decisions and account for stochastic demand seasonality varies depending on factors such as size, star rating, and brand affiliation. As a primary empirical finding, we show that the autocorrelations of the first four moments of the last-minute price adjustment can be used to gain crucial insights into the hoteliers’ pricing strategies. Scaling up this approach has the potential to equip policymakers in smart destinations with a reliable and transparent tool for the real-time monitoring of demand dynamics.
2024
Reverse engineering the last-minute on-line pricing practices: an application to hotels / Guizzardi, Andrea; Ballestra, Luca Vincenzo; D’Innocenzo, Enzo. - In: STATISTICAL METHODS & APPLICATIONS. - ISSN 1618-2510. - ELETTRONICO. - N/A:(2024), pp. N/A-N/A. [10.1007/s10260-024-00751-3]
Guizzardi, Andrea; Ballestra, Luca Vincenzo; D’Innocenzo, Enzo
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/967153
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