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On the Heavy-Tail Behavior of the Distributionally Robust Newsvendor

Author

Listed:
  • Bikramjit Das

    (Engineering Systems and Design, Singapore University of Technology and Design, Singapore 487372)

  • Anulekha Dhara

    (Deep Learning and Artificial Intelligence, TCS Research, New Delhi 201309, India)

  • Karthik Natarajan

    (Engineering Systems and Design, Singapore University of Technology and Design, Singapore 487372)

Abstract

Since the seminal work of Scarf (A min-max solution of an inventory problem) in 1958 on the newsvendor problem with ambiguity in the demand distribution, there has been a growing interest in the study of the distributionally robust newsvendor problem. The model is criticized at times for being conservative because the worst-case distribution is discrete with a few support points. However, it is the order quantity prescribed by the model that is of practical relevance. Interestingly, the order quantity from Scarf’s model is optimal for a heavy-tailed distribution. In this paper, we generalize this observation by showing a heavy-tail optimality property of the distributionally robust order quantity for an ambiguity set where information on the first and the αth moment is known, for any real α > 1. We show that the optimal order quantity for the distributionally robust newsvendor is also optimal for a regularly varying distribution with parameter α. In the high service level regime, when the original demand distribution is given by an exponential or a lognormal distribution and contaminated with a regularly varying distribution, the distributionally robust order quantity is shown to outperform the optimal order quantity of the original distribution, even with a small amount of contamination.

Suggested Citation

  • Bikramjit Das & Anulekha Dhara & Karthik Natarajan, 2021. "On the Heavy-Tail Behavior of the Distributionally Robust Newsvendor," Operations Research, INFORMS, vol. 69(4), pages 1077-1099, July.
  • Handle: RePEc:inm:oropre:v:69:y:2021:i:4:p:1077-1099
    DOI: 10.1287/opre.2020.2091
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