考虑需求学习的动态定价线性模型的(惊人)充分性

Omar Besbes, A. Zeevi
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引用次数: 171

摘要

考虑一个需求曲线未知的多时期单产品定价问题。卖方的目标是在每个时期调整价格,以便在给定的有限时间范围内最大化累积预期收入;在此过程中,卖方需要解决学习未知需求曲线和最大化赚取收入之间的紧张关系。我们研究的主要问题如下:如果卖方使用一个简单的参数模型,它与潜在的需求曲线有很大的不同,也就是说,是错误指定的,那么产生的收入损失有多大?我们通过分析由这个错误的模型引起的价格轨迹来衡量业绩,并将收入损失的程度量化为相对于知道真正潜在需求曲线的预测器的时间范围的函数。如果参数化模型过于严格,预期“错误规范的代价”将是显著的。有些令人惊讶的是,我们在合理的一般条件下表明,情况并非如此。本文被Gerard Cachon接受,随机模型与仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the (Surprising) Sufficiency of Linear Models for Dynamic Pricing with Demand Learning
We consider a multiperiod single product pricing problem with an unknown demand curve. The seller's objective is to adjust prices in each period so as to maximize cumulative expected revenues over a given finite time horizon; in doing so, the seller needs to resolve the tension between learning the unknown demand curve and maximizing earned revenues. The main question that we investigate is the following: How large of a revenue loss is incurred if the seller uses a simple parametric model that differs significantly i.e., is misspecified relative to the underlying demand curve? We measure performance by analyzing the price trajectory induced by this misspecified model and quantifying the magnitude of revenue losses as a function of the time horizon relative to an oracle that knows the true underlying demand curve. The "price of misspecification" is expected to be significant if the parametric model is overly restrictive. Somewhat surprisingly, we show under reasonably general conditions that this need not be the case. This paper was accepted by Gerard Cachon, stochastic models and simulation.
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