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Omar El Housni

Omar El Housni

Verified

Cornell University · Operations Research and Information Engineering

Active 2017–2024

h-index6
Citations152
Papers3830 last 5y
Funding
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Research topics

  • Computer Science
  • Statistics
  • Mathematical optimization
  • Mathematics
  • Finance
  • Economics

Selected publications

  • Fluid Approximations for Revenue Management Under High-Variance Demand

    Management Science · 2023 · 18 citations

    • Computer Science
    • Computer Science
    • Mathematical optimization

    One of the most prevalent demand models in the revenue management literature is based on dividing the selling horizon into a number of time periods such that there is at most one customer arrival at each time period. This demand model is equivalent to using a discrete-time approximation to a Poisson process, but it has an important shortcoming. If the mean number of customer arrivals is large, then the coefficient of variation of the number of customer arrivals has to be small. In other words, large demand volume and large demand variability cannot coexist in this demand model. In this paper, we start with a revenue management model that incorporates general mean and variance for the number of customer arrivals. This revenue management model has a random selling horizon length, capturing the distribution of the number of customer arrivals. The question we seek to answer is the form of the fluid approximation that corresponds to this revenue management model. It is tempting to construct the fluid approximation by computing the expected consumption of the resource capacities in the constraints and the total expected revenue in the objective function through the distribution of the number of customer arrivals. We demonstrate that this answer is wrong in the sense that it yields a fluid approximation that is not asymptotically tight as the resource capacities get large. We give an alternative fluid approximation where perhaps surprisingly, the distribution of the number of customer arrivals does not play any role in the constraints. We show that this fluid approximation is asymptotically tight as the resource capacities get large. A numerical study also demonstrates that the policies driven by the latter fluid approximation perform substantially better, so there is practical value in getting the fluid approximation right under high-variance demand. This paper was accepted by Omar Besbes, revenue management and market analytics. Funding: The work of the O. El Housni and H. Topaloglu was supported by a seed grant from Urban Tech research hub at Cornell Tech. Supplemental Material: The data files and online appendix are available at https://doi.org/10.1287/mnsc.2023.4769 .

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