Choice-Based Dynamic Pricing for Vacation Rentals

Yaping Wang, K. McGuire, Jeremy Terbush, Michael T. Towns, C. Anderson
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Abstract

In this paper, we propose a new dynamic pricing approach for the vacation rental revenue management problem. The proposed approach is based on a conditional logistic regression that predicts the purchasing probability for rental units as a function of various factors, such as lead time, availability, property features, and market selling prices. In order to estimate the price sensitivity throughout the booking horizon, a rolling window technique is provided to smooth the impact over time and build a consistent estimation. We apply a nonlinear optimization algorithm to determine optimal prices to maximize the revenue, considering current demand, availability from both the rental company and its competitors, and the price sensitivity of the rental guest. A booking curve heuristic is used to align the booking pace with business targets and feed the adjustments back into the optimization routine. We illustrate the proposed approach by successfully applying it to the revenue management problem of Wyndham Destinations vacation rentals. Model performance is evaluated by pricing two regions within the Wyndham network for part of the 2018 vacation season, indicating revenue per unit growth of 3.5% and 5.2% (for the two regions) through model use.
基于选择的度假租赁动态定价
本文针对度假租赁收益管理问题,提出了一种新的动态定价方法。提出的方法基于条件逻辑回归,预测租赁单元的购买概率作为各种因素的函数,如交货时间、可用性、物业特征和市场销售价格。为了估计整个预订期间的价格敏感性,提供了滚动窗口技术来平滑随时间的影响并建立一致的估计。考虑当前需求、租赁公司及其竞争对手的可用性以及租客的价格敏感性,我们应用非线性优化算法来确定最优价格,以使收益最大化。预订曲线启发式用于使预订速度与业务目标保持一致,并将调整反馈到优化程序中。我们通过成功地将所提出的方法应用于温德姆目的地度假租赁的收益管理问题来说明所提出的方法。模型的性能是通过对2018年部分度假季节温德姆网络中的两个地区进行定价来评估的,表明通过使用模型,每个单位的收入增长了3.5%和5.2%(对于这两个地区)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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