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Markdown Pricing Under an Unknown Parametric Demand Model

23 December 2023
Su Jia
Andrew Li
Ramamoorthi Ravi
ArXiv (abs)PDFHTML
Abstract

Consider a single-product revenue-maximization problem where the seller monotonically decreases the price in nnn rounds with an unknown demand model coming from a given family. Without monotonicity, the minimax regret is O~(n2/3)\tilde O(n^{2/3})O~(n2/3) for the Lipschitz demand family and O~(n1/2)\tilde O(n^{1/2})O~(n1/2) for a general class of parametric demand models. With monotonicity, the minimax regret is O~(n3/4)\tilde O(n^{3/4})O~(n3/4) if the revenue function is Lipschitz and unimodal. However, the minimax regret for parametric families remained open. In this work, we provide a complete settlement for this fundamental problem. We introduce the crossing number to measure the complexity of a family of demand functions. In particular, the family of degree-kkk polynomials has a crossing number kkk. Based on conservatism under uncertainty, we present (i) a policy with an optimal Θ(log⁡2n)\Theta(\log^2 n)Θ(log2n) regret for families with crossing number k=0k=0k=0, and (ii) another policy with an optimal Θ~(nk/(k+1))\tilde \Theta(n^{k/(k+1)})Θ~(nk/(k+1)) regret when k≥1k\ge 1k≥1. These bounds are asymptotically higher than the O~(log⁡n)\tilde O(\log n)O~(logn) and Θ~(n)\tilde \Theta(\sqrt n)Θ~(n​) minimax regret for the same families without the monotonicity constraint.

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