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Dynamic Pricing in the Linear Valuation Model using Shape Constraints

Main:13 Pages
7 Figures
Bibliography:3 Pages
4 Tables
Appendix:6 Pages
Abstract

We propose a shape-constrained approach to dynamic pricing for censored data in the linear valuation model that eliminates the need for tuning parameters commonly required in existing methods. Previous works have addressed the challenge of unknown market noise distribution F0F_0 using strategies ranging from kernel methods to reinforcement learning algorithms, such as bandit techniques and upper confidence bounds (UCB), under the Lipschitz (and stronger) assumption(s) on F0F_0. In contrast, our method relies on isotonic regression under the weaker assumption that F0F_0 is α\alpha-Holder continuous for some α(0,1]\alpha \in (0,1]. Simulations and experiments with real-world data obtained by Welltower Inc (a major healthcare Real Estate Investment Trust) consistently demonstrate that our method attains better empirical regret in comparison to several existing methods in the literature while offering the advantage of being completely tuning-parameter free.

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