资源受限定价中信息的价值 / The Value of Information in Resource-Constrained Pricing
1️⃣ 一句话总结
这篇论文研究了企业在销售机票、酒店房间等易逝性资源时,如何利用不同质量的需求预测来优化动态定价,发现高质量的预测能显著提升决策效率,而存在偏差的替代模型也能通过减少不确定性来辅助定价,从而在库存有限的情况下最大化收益。
Firms that price perishable resources -- airline seats, hotel rooms, seasonal inventory -- now routinely use demand predictions, but these predictions vary widely in quality. Under hard capacity constraints, acting on an inaccurate prediction can irreversibly deplete inventory needed for future periods. We study how prediction uncertainty propagates into dynamic pricing decisions with linear demand, stochastic noise, and finite capacity. A certified demand forecast with known error bound~$\epsilon^0$ specifies where the system should operate: it shifts regret from $O(\sqrt{T})$ to $O(\log T)$ when $\epsilon^0 \lesssim T^{-1/4}$, and we prove this threshold is tight. A misspecified surrogate model -- biased but correlated with true demand -- cannot set prices directly but reduces learning variance by a factor of $(1-\rho^2)$ through control variates. The two mechanisms compose: the forecast determines the regret regime; the surrogate tightens estimation within it. All algorithms rest on a boundary attraction mechanism that stabilizes pricing near degenerate capacity boundaries without requiring non-degeneracy assumptions. Experiments confirm the phase transition threshold, the variance reduction from surrogates, and robustness across problem instances.
资源受限定价中信息的价值 / The Value of Information in Resource-Constrained Pricing
这篇论文研究了企业在销售机票、酒店房间等易逝性资源时,如何利用不同质量的需求预测来优化动态定价,发现高质量的预测能显著提升决策效率,而存在偏差的替代模型也能通过减少不确定性来辅助定价,从而在库存有限的情况下最大化收益。
源自 arXiv: 2603.24974