Forecasting demand is one of the fundamental components of a successful revenue management system in hospitality. The industry requires understandable models that contribute to adaptability by a revenue management department to make data-driven decisions. Data analysis and forecasts prove an essential role for the time until the check-in date, which differs per day of week. This paper aims to provide a new model, which is inspired by cubic smoothing splines, resulting in smooth demand curves per rate class over time until the check-in date. This model regulates the error between data points and a smooth curve, and is therefore able to capture natural guest behavior. The forecast is obtained by solving a linear programming model, which enables the incorporation of industry knowledge in the form of constraints. Using data from a major hotel chain, a lower error and 13.3% more revenue is obtained.
翻译:预测需求是成功的招待业收入管理系统的基本组成部分之一。 行业需要一些可以理解的模式,有助于税收管理部门适应数据驱动决策。 数据分析和预测证明,直到报到日期(每周每天有差异)之前,在时间上起着关键作用。 本文旨在提供一个新模式,它受到三次平滑的样条的启发,导致在报到日期之前,每类费率顺畅的需求曲线。 该模式调节数据点和平稳曲线之间的错误,因此能够捕捉到自然客人的行为。 该预测是通过解决线性编程模式获得的,该模式能够以限制的形式纳入行业知识。 使用主要旅馆链的数据,一个较低的错误和13.3%以上的收入。