Article ID: | iaor200973325 |
Volume: | 57 |
Issue: | 6 |
Start Page Number: | 1407 |
End Page Number: | 1420 |
Publication Date: | Nov 2009 |
Journal: | Operations Research |
Authors: | Zeevi Assaf, Besbes Omar |
Keywords: | inventory: order policies |
We consider a single-product revenue management problem where, given an initial inventory, the objective is to dynamically adjust prices over a finite sales horizon to maximize expected revenues. Realized demand is observed over time, but the underlying functional relationship between price and mean demand rate that governs these observations (otherwise known as the demand function or demand curve) is not known. We consider two instances of this problem: (i) a setting where the demand function is assumed to belong to a known parametric family with unknown parameter values; and (ii) a setting where the demand function is assumed to belong to a broad class of functions that need not admit any parametric representation. In each case we develop policies that learn the demand function ‘on the fly’, and optimize prices based on that. The performance of these algorithms is measured in terms of the