Demand estimation plays an important role in dynamic pricing where the optimal price can be obtained via maximizing the revenue based on the demand curve. In online hotel booking platform, the demand or occupancy of rooms varies across room-types and changes over time, and thus it is challenging to get an accurate occupancy estimate. In this paper, we propose a novel hotel demand function that explicitly models the price elasticity of demand for occupancy prediction, and design a price elasticity prediction model to learn the dynamic price elasticity coefficient from a variety of affecting factors. Our model is composed of carefully designed elasticity learning modules to alleviate the endogeneity problem, and trained in a multi-task framework to tackle the data sparseness. We conduct comprehensive experiments on real-world datasets and validate the superiority of our method over the state-of-the-art baselines for both occupancy prediction and dynamic pricing.
翻译:需求估算在动态定价中起着重要作用,因为根据需求曲线,可以最大限度地增加收入,从而获得最佳价格。 在在线酒店预订平台中,房间的需求或占用因房间类型和时间变化而异,因此很难获得准确的占用估计。 在本文中,我们提出一个新的酒店需求功能,明确模拟占用预测需求的价格弹性,并设计价格弹性预测模型,以便从各种影响因素中了解动态价格弹性系数。我们的模式由精心设计的弹性学习模块组成,以减轻内分泌问题,并接受多任务框架的培训,以解决数据稀少问题。我们全面试验真实世界数据集,并验证我们方法优于最先进的占用预测和动态定价基线。