Doubly High-Dimensional Contextual Bandits: An Interpretable Model for Joint Assortment-Pricing
Junhui Cai, Ran Chen, Martin J. Wainwright, Linda Zhao

TL;DR
This paper introduces a joint assortment-pricing model using high-dimensional contextual bandits with a low-rank structure, achieving interpretable insights and significant revenue gains in real-world retail scenarios.
Contribution
It proposes a novel doubly high-dimensional bandit model with a low-rank interaction structure, combining interpretability with computational efficiency and theoretical regret bounds.
Findings
Lower regret than state-of-the-art methods in simulations
At least three-fold revenue or profit gains in case studies
Model captures interactions via interpretable latent factors
Abstract
Key challenges in running a retail business include how to select products to present to consumers (the assortment problem), and how to price products (the pricing problem) to maximize revenue or profit. Instead of considering these problems in isolation, we propose a joint approach to assortment-pricing based on contextual bandits. Our model is doubly high-dimensional, in that both context vectors and actions are allowed to take values in high-dimensional spaces. In order to circumvent the curse of dimensionality, we propose a simple yet flexible model that captures the interactions between covariates and actions via a (near) low-rank representation matrix. The resulting class of models is reasonably expressive while remaining interpretable through latent factors, and includes various structured linear bandit and pricing models as particular cases. We propose a computationally…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Forecasting Techniques and Applications · Supply Chain and Inventory Management
