动态定价在未知和销售依赖的不断发展的市场

Yiwei Chen, Fangzhao Zhang
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引用次数: 0

摘要

我们考虑一个通过动态定价在有限期限内以有限库存销售单一产品的公司。市场规模是累积历史销售额的多项式函数。在季节开始之前,公司不知道市场规模函数的系数,必须随着时间的推移学习它。该公司的目标是找到一种能产生尽可能多收入的定价政策。我们表明,在她事先完全知道市场规模函数中的所有系数并且系统是确定的(流体模型)的情况下,公司的收入是她的最优收入的上限。对于这个流体模型,我们证明了用销售量代替价格作为决策变量,问题变成了一个可以有效求解的凸规划。我们提出了一个最大似然估计-再优化(MR)策略。在此策略下,企业在每个时期都进行学习和优化工作。在学习任务中,企业使用最大似然估计方法形成未知系数的点估计。在优化工作中,该公司利用剩余库存、剩余地平线和未知系数估计的最新信息来求解流体模型。我们为初始库存和视界长度按比例扩大的制度确定了我们政策遗憾的上限。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Pricing in an Unknown and Sales-dependent Evolving Marketplace
We consider a firm who sells a single product with finite inventory over a finite horizon via dynamic pricing. The market size is a polynomial function of cumulative historic sales. The firm does not know the coefficients in the market size function before the start of the season and must learn it over time. The firm aims at finding a pricing policy that yields as much revenue as possible. We show that the firm's revenue is upper bounded by her optimal revenue in a setting that she perfectly knew all coefficients in the market size function ex ante and the system is deterministic (fluid model). For this fluid model, we show that by replacing prices with sales quantities as the decision variables, the problem becomes a convex program that can be efficiently solved. We propose a maximum likelihood estimate - reoptimized (MR) policy. Under this policy, in each period, the firm performs learning and optimization jobs. In the learning job, the firm uses the maximum likelihood estimate approach to form a point estimate of unknown coefficients. In the optimization job, the firm resolves the fluid model with updated information on remaining inventory, remaining horizon and the estimate of the unknown coefficients. We establish an upper bound of the regret of our policy for the regime that the initial inventory and the length of the horizon are proportionally scaled up.
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