Parameter-Adaptive Dynamic Pricing
Journal:
arXiv
Published Date:
Mar 2, 2025
Abstract
Dynamic pricing is crucial in sectors like e-commerce and transportation,
balancing exploration of demand patterns and exploitation of pricing
strategies. Existing methods often require precise knowledge of the demand
function, e.g., the H{\"o}lder smoothness level and Lipschitz constant,
limiting practical utility. This paper introduces an adaptive approach to
address these challenges without prior parameter knowledge. By partitioning the
demand function's domain and employing a linear bandit structure, we develop an
algorithm that manages regret efficiently, enhancing flexibility and
practicality. Our Parameter-Adaptive Dynamic Pricing (PADP) algorithm
outperforms existing methods, offering improved regret bounds and extensions
for contextual information. Numerical experiments validate our approach,
demonstrating its superiority in handling unknown demand parameters.