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Competitive revenue management models with loyal and fully flexible customers

In: Artificial Intelligence and Machine Learning in the Travel Industry

Author

Listed:
  • Ravi Kumar

    (PROS Inc, Suite 600, 3200 Kirby Dr)

  • Wei Wang

    (PROS Inc, Suite 600, 3200 Kirby Dr)

  • Ahmed Simrin

    (Etihad Airways, Khalifa city A)

  • Sivarama Krishnan Arunachalam

    (Etihad Airways, Khalifa city A)

  • Bhaskara Rao Guntreddy

    (Etihad Airways, Khalifa city A)

  • Darius Walczak

    (PROS Inc, Suite 600, 3200 Kirby Dr)

Abstract

Developing practical models for capturing competitive effects in revenue management and pricing systems has been a significant challenge for airlines and other industries. The prevalent mechanisms of accounting for competitive effects rely on changing the price structure and making manual adjustments to respond to dynamically evolving competitive scenarios. Furthermore, micro-economic models have also not become popular in practice primarily because of the simplistic mechanisms proposed for modeling consumer behavior in a competitive setting. In particular, many of these models assume that the customers always seek the lowest price in the market, that is they are fully flexible. In practice, customers may display some degree of affinity or loyalty to an airline and may pay a premium for their preferred choice. On the other hand, almost all early revenue management models did not explicitly consider competitive effects and assumed that an airline’s demand only depends on their prices i.e., demand is fully dedicated to an airline (loyal). This paper develops a model to capture more realistic competitive dynamics by including both these types of customer behavior.We also develop a Bayesian machine learning based demand forecasting methodology for such models with explicit competitive considerations and show the benefit of this approach over traditional models on a real airline data set.

Suggested Citation

  • Ravi Kumar & Wei Wang & Ahmed Simrin & Sivarama Krishnan Arunachalam & Bhaskara Rao Guntreddy & Darius Walczak, 2023. "Competitive revenue management models with loyal and fully flexible customers," Springer Books, in: Ben Vinod (ed.), Artificial Intelligence and Machine Learning in the Travel Industry, pages 47-66, Springer.
  • Handle: RePEc:spr:sprchp:978-3-031-25456-7_5
    DOI: 10.1007/978-3-031-25456-7_5
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