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Improved forecast accuracy in revenue management by unconstraining demand estimates from censored data.

机译:通过不受审查数据的需求估计的约束,提高了收入管理的预测准确性。

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摘要

Accurate forecasts are crucial to a revenue management system. Poor estimates of demand lead to inadequate inventory controls and sub-optimal revenue performance. Forecasting for airline revenue management systems is inherently difficult. Competitive actions, seasonal factors, the economic environment, and constant fare changes are a few of the hurdles that must be overcome. In addition, the fact that most of the historical demand data is censored further complicates the problem. This dissertation examines the challenge of forecasting for an airline revenue management system in the presence of censored demand data.; The number of seats an airline can sell on a flight is determined by the booking limits set by the revenue management system. An airline continues to accept reservations in a fare class until the booking limit is reached. At that point, the airline stops selling seats in that fare class-It also stops collecting valuable data. Demand for travel in that fare class may exceed the booking limit, but the data does not reflect this. So the data is censored or "constrained" at the booking limit.; While some models exist that produce unbiased forecasts from censored data, it is preferable to "unconstrain" the censored observations so that they represent true demand. Then, the forecasting model may be chosen based on the structure of the problem rather than the nature of the data. This dissertation analyzed the improvement it forecast accuracy that results from estimating demand by unconstraining the censored data.; Little research has been done on unconstraining censored data for revenue management systems. Airlines tend to either ignore the problem or use very simple ad hoc methods to deal with it. A literature review explores the current methods for unconstraining censored data. Also, practices borrowed from areas outside of revenue management are adapted to this application. For example, the Expectation-Maximization (EM) and other imputation methods were investigated. These methods are evaluated and tested using simulation and actual airline data. An extension to the EM algorithm that results in a 41% improvement in forecast accuracy is presented.
机译:准确的预测对于收入管理系统至关重要。需求估计不足会导致库存控制不足和收入表现欠佳。预测航空公司收入管理系统本质上是困难的。竞争行动,季节性因素,经济环境和不断变化的票价是必须克服的一些障碍。此外,大多数历史需求数据都经过审查的事实使问题进一步复杂化。本文研究了存在需求审查数据的航空公司收益管理系统预测的挑战。航空公司可以在一个航班上出售的座位数由收入管理系统设置的预订限制确定。航空公司继续接受票价舱位的预订,直到达到预订限制。届时,该航空公司将停止销售该票价级别的座位,也将停止收集有价值的数据。该票价舱位的旅行需求可能超出预订限制,但数据并未反映这一点。因此,数据将在预订限制时被检查或“约束”。尽管存在一些模型,这些模型可以根据审查数据生成无偏的预测,但最好是“无约束”审查的观察值,以便它们代表真实的需求。然后,可以基于问题的结构而不是数据的性质来选择预测模型。论文分析了无约束数据的约束对需求预测的准确性的提高。对于收入管理系统的不受约束的审查数据,很少有研究。航空公司倾向于忽略该问题,或者使用非常简单的临时方法来解决该问题。文献综述探讨了不受约束的审查数据的当前方法。同样,从收入管理之外的地方借用的实践也适用于此应用程序。例如,研究了期望最大化(EM)和其他估算方法。这些方法是使用模拟和实际航空公司数据进行评估和测试的。提出了对EM算法的扩展,可将预测准确性提高41%。

著录项

  • 作者

    Zeni, Richard Henry.;

  • 作者单位

    Rutgers The State University of New Jersey - Newark.;

  • 授予单位 Rutgers The State University of New Jersey - Newark.;
  • 学科 Operations Research.; Statistics.; Economics General.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 261 p.
  • 总页数 261
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 运筹学;统计学;经济学;
  • 关键词

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