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Dynamic Pricing and Demand Learning on a Large Network of Products: A PAC-Bayesian Approach

1 November 2021
Bora Keskin
D. Simchi-Levi
Prem M. Talwai
ArXiv (abs)PDFHTML
Abstract

We consider a seller offering a large network of NNN products over a time horizon of TTT periods. The seller does not know the parameters of the products' linear demand model, and can dynamically adjust product prices to learn the demand model based on sales observations. The seller aims to minimize its pseudo-regret, i.e., the expected revenue loss relative to a clairvoyant who knows the underlying demand model. We consider a sparse set of demand relationships between products to characterize various connectivity properties of the product network. In particular, we study three different sparsity frameworks: (1) L0L_0L0​ sparsity, which constrains the number of connections in the network, and (2) off-diagonal sparsity, which constrains the magnitude of cross-product price sensitivities, and (3) a new notion of spectral sparsity, which constrains the asymptotic decay of a similarity metric on network nodes. We propose a dynamic pricing-and-learning policy that combines the optimism-in-the-face-of-uncertainty and PAC-Bayesian approaches, and show that this policy achieves asymptotically optimal performance in terms of NNN and TTT. We also show that in the case of spectral and off-diagonal sparsity, the seller can have a pseudo-regret linear in NNN, even when the network is dense.

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