Network Revenue Management under a Spiked Multinomial Logit Choice Model

65 Pages Posted: 12 Jul 2018 Last revised: 22 Oct 2021

See all articles by Yufeng Cao

Yufeng Cao

Shanghai Jiao Tong University (SJTU) - Antai College of Economics and Management

Anton Kleywegt

Georgia Institute of Technology - School of Industrial and Systems Engineering

He Wang

Georgia Institute of Technology - The H. Milton Stewart School of Industrial & Systems Engineering (ISyE)

Date Written: September 26, 2019

Abstract

Airline booking data have shown that the fraction of customers who choose the cheapest available fare class often is much greater than that predicted by the multinomial logit choice model calibrated with the data. For example, the fraction of customers who choose the cheapest available fare class is much greater than the fraction of customers who choose the next cheapest available one, even if the price difference is small. To model this spike in demand for the cheapest available fare class, a choice model called the spiked multinomial logit (spiked-MNL) model was proposed. We study a network revenue management problem under the spiked-MNL choice model. We show that efficient sets, i.e., assortments that offer a Pareto-optimal trade-off between revenue and resource usage, are nested-by-revenue when the spike effect is nonnegative. We use this result to show how a deterministic approximation of the stochastic dynamic program can be solved efficiently by solving a small linear program. The solution of the small linear program is used to construct a booking limit policy, and we prove that the policy is asymptotically optimal. This is the first such result for a booking limit policy under a choice model, and our proof uses an approach that is different from those used for previous asymptotic optimality results. Finally, we evaluate different revenue management policies in numerical experiments using both synthetic and airline data.

Keywords: Network Revenue Management, Assortment Optimization, Discrete Choice Model

Suggested Citation

Cao, Yufeng and Kleywegt, Anton and Wang, He, Network Revenue Management under a Spiked Multinomial Logit Choice Model (September 26, 2019). Available at SSRN: https://ssrn.com/abstract=3200531 or http://dx.doi.org/10.2139/ssrn.3200531

Yufeng Cao

Shanghai Jiao Tong University (SJTU) - Antai College of Economics and Management ( email )

1954 Huashan Road
Shanghai, Shanghai 200030
China

Anton Kleywegt

Georgia Institute of Technology - School of Industrial and Systems Engineering ( email )

Atlanta, GA 30332
United States

He Wang (Contact Author)

Georgia Institute of Technology - The H. Milton Stewart School of Industrial & Systems Engineering (ISyE) ( email )

765 Ferst Drive
Atlanta, GA 30332-0205
United States

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
484
Abstract Views
2,023
Rank
128,167
PlumX Metrics