2023
DOI: 10.1287/msom.2022.1094
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Estimating Personalized Demand with Unobserved No-Purchases Using a Mixture Model: An Application in the Hotel Industry

Abstract: Problem definition: Estimating customer demand for revenue management solutions faces two main hurdles: unobservable no-purchases and nonhomogenous customer populations with varying preferences. We propose a novel and practical estimation and segmentation methodology that overcomes both challenges simultaneously. Academic/practical relevance: We combine the estimation of discrete choice modeling under unobservable no-purchases with a data-driven identification of customer segments. In collaboration with our in… Show more

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Cited by 6 publications
(2 citation statements)
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“…Given the recommended average discount levels, we then solve the linear program separately for each type of rooms to obtain capacity allocations. When there are multiple room types, hotels may offer standby upgrades to increase revenue (Cho et al, 2022; Cui et al, 2018; Yılmaz et al, 2017). It would be interesting to study how to incorporate the upsell process into a reinforcement learning framework.…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…Given the recommended average discount levels, we then solve the linear program separately for each type of rooms to obtain capacity allocations. When there are multiple room types, hotels may offer standby upgrades to increase revenue (Cho et al, 2022; Cui et al, 2018; Yılmaz et al, 2017). It would be interesting to study how to incorporate the upsell process into a reinforcement learning framework.…”
Section: Discussionmentioning
confidence: 99%
“…Current hotel revenue management literature focuses on sophisticated issues such as optimizing standby upgrades (Yılmaz et al, 2017), pricing of conditional upgrades (Cui et al, 2018), estimating strategic customer behavior in the context of standby upgrades (Yılmaz, Ferguson, et al, 2022), predicting personalized demand with unobserved no-purchases (Cho et al, 2022), and identifying demand elasticities by leveraging the ability of observing delayed price adjustment to demand shocks (Garcia et al, 2022). However, the aforementioned challenges that budget hotels face are often ignored.…”
Section: Clg's Revenue Management Problemmentioning
confidence: 99%