Improved Forecast Accuracy in Airline Revenue Management by Unconstraining Demand Estimates from Cen - Richard H. Zeni - Books - Dissertation.Com. - 9781581121414 - December 1, 2001
In case cover and title do not match, the title is correct

Improved Forecast Accuracy in Airline Revenue Management by Unconstraining Demand Estimates from Cen

Richard H. Zeni

Price
€ 38.49

Ordered from remote warehouse

Expected delivery Dec 24 - Jan 2, 2025
Christmas presents can be returned until 31 January
Add to your iMusic wish list

Improved Forecast Accuracy in Airline Revenue Management by Unconstraining Demand Estimates from Cen

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. This dissertation analyzed the improvement in 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.

Media Books     Paperback Book   (Book with soft cover and glued back)
Released December 1, 2001
ISBN13 9781581121414
Publishers Dissertation.Com.
Pages 276
Dimensions 381 g
Language English