Product-Closing Approximation for Ranking-based Choice Network Revenue Management
Most recent research in network revenue management incorporates choice behavior that models the customers' buying logic. These models are consequently more complex to solve, but they return a more robust policy that usually generates better expected revenue than an independent-demand model. Cho...
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Zusammenfassung: | Most recent research in network revenue management incorporates choice
behavior that models the customers' buying logic. These models are consequently
more complex to solve, but they return a more robust policy that usually
generates better expected revenue than an independent-demand model. Choice
network revenue management has an exact dynamic programming formulation that
rapidly becomes intractable. Approximations have been developed, and many of
them are based on the multinomial logit demand model. However, this parametric
model has the property known as the independence of irrelevant alternatives and
is often replaced in practice by a nonparametric model. We propose a new
approximation called the product closing program that is specifically designed
for a ranking-based choice model representing a nonparametric demand. Numerical
experiments show that our approach quickly returns expected revenues that are
slightly better than those of other approximations, especially for large
instances. Our approximation can also supply a good initial solution for other
approaches. |
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DOI: | 10.48550/arxiv.1805.10537 |