Chateau de Montana : applying data analytics to simulate room price of a repositioned hotel /

Olga Mitireva and Yulia Belopilskaya (the consultants) had been commissioned by Nicolas Dupont, the owner of Chateau de Montana, a struggling (and old) boutique hotel in Crans-Montana Ski Resort (Switzerland) to assess whether his hotel with enhanced amenities can fetch the higher room rates that he...

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Bibliographic Details
Main Author: Das, Prashant (Author)
Format: eBook
Language:English
Published: London : Indian Institute of Management, Ahmedabad, 2024.
Series:SAGE Business cases.
Subjects:
Online Access:Connect to the full text of this electronic book
Description
Summary:Olga Mitireva and Yulia Belopilskaya (the consultants) had been commissioned by Nicolas Dupont, the owner of Chateau de Montana, a struggling (and old) boutique hotel in Crans-Montana Ski Resort (Switzerland) to assess whether his hotel with enhanced amenities can fetch the higher room rates that he was targeting. The hotel was underperforming in terms of room rates. Duponts' plan was to invest in capital expenditure by offering new amenities, alter some of the services offered by the hotel and assure that in different seasons, the room rates would be enhanced. Room rates are a composite of different attributes offered with the hotel room and amenities offered by the hotel. However, the rates are decided by market forces. The equilibrium prices are reflected in the room rates published by online travel agencies (e.g. Tripadvisor.com). The consultants, Mitireva and Belopilskaya, decided to extract the pricing pattern from comparable listings and apply hedonic pricing. The case provides data on room prices and detailed attributes of 194 hotels in Crans-Montana and similar localities. The case exposes the students to the scope of data analytics in pricing and expects the students to have a basic understanding of regression modeling using any tool (MS Excel R, SPSS, Python, etc.). Students critique the cognitive limitations of analyzing comparable room prices from other hotels and apply ordinary least square (OLS) regression modeling to simulate the price of the (counterfactual) repositioned hotel room. Ideally, students should be asked to revise their understanding of OLS regression in advance before coming to the session. Those who are well versed with advanced tools (R, SPSS, Python, Stata, etc.) should be encouraged to be ready with the software installation (and licensing, if applicable). Else, the case can also be discussed in Excel.
Physical Description:1 online resource : illustrations.
ISBN:9781071942055
1071942050