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Bayesian reinforcement learning to optimize paid ancillary revenue in the airline industry

Author

Listed:
  • Kevin Duijndam

    (Vrije Universiteit
    KLM Royal Dutch Airlines)

  • Ger Koole

    (Vrije Universiteit)

  • Rob Mei

    (Vrije Universiteit
    Centre for Mathematics and Computer Science (CWI))

Abstract

To optimize the pricing of paid ancillary seats, we adopt a revenue management approach that optimizes over the capacity of these seats while accounting for unknown underlying model parameters. We test various models against a simulation model to assess the performance against wide-ranging input parameters. We demonstrate that using a Bayesian exponential demand model to describe the relationship between price and seats sold, combined with a Bayesian reinforcement learning approach to estimate its parameters, outperforms other approaches. By using a relatively simple demand model with a limited number of parameters, updating in a Bayesian manner, and in one step estimating demand parameters to directly use for price optimization, the model is quickly able to perform well across a wide range of demand scenarios.

Suggested Citation

  • Kevin Duijndam & Ger Koole & Rob Mei, 2025. "Bayesian reinforcement learning to optimize paid ancillary revenue in the airline industry," Journal of Revenue and Pricing Management, Palgrave Macmillan, vol. 24(6), pages 551-567, December.
  • Handle: RePEc:pal:jorapm:v:24:y:2025:i:6:d:10.1057_s41272-025-00523-y
    DOI: 10.1057/s41272-025-00523-y
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