Article ID: | iaor20164772 |
Volume: | 29 |
Issue: | 1 |
Start Page Number: | 18 |
End Page Number: | 35 |
Publication Date: | Feb 2017 |
Journal: | INFORMS Journal on Computing |
Authors: | Zhang Dan, Weatherford Larry |
Keywords: | combinatorial optimization, programming: dynamic, heuristics, networks |
Dynamic pricing for network revenue management has received considerable attention in research and practice. Based on data obtained from a major hotel, we use a large‐scale numerical study to compare the performance of several heuristic approaches proposed in the literature. The heuristic approaches we consider include deterministic linear programming with resolving and three variants of dynamic programming decomposition. Dynamic programming decomposition is considered one of the strongest heuristics and is the method chosen in some recent commercial implementations, and remains a topic of research in the recent academic literature. In addition to a plain‐vanilla implementation of dynamic programming decomposition, we consider two variants proposed in recent literature. For the base scenario generated from the real data, we show that the method based on Zhang (2011) [An improved dynamic programming decomposition approach for network revenue management.