| Article ID: | iaor20164708 |
| Volume: | 63 |
| Issue: | 6 |
| Start Page Number: | 1294 |
| End Page Number: | 1306 |
| Publication Date: | Dec 2015 |
| Journal: | Operations Research |
| Authors: | Perakis Georgia, Levi Retsef, Uichanco Joline |
| Keywords: | demand |
Consider the newsvendor model, but under the assumption that the underlying demand distribution is not known as part of the input. Instead, the only information available is a random, independent sample drawn from the demand distribution. This paper analyzes the sample average approximation (SAA) approach for the data‐driven newsvendor problem. We obtain a new analytical bound on the probability that the relative regret of the SAA solution exceeds a threshold. This bound is significantly tighter than existing bounds, and it matches the empirical accuracy of the SAA solution observed in extensive computational experiments. This bound reveals that the demand distribution’s