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Demand Estimation Under the Multinomial Logit Model from Sales Transaction Data

机译:从销售交易数据的多项式Logit模型下的需求估算

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Problem definition: A major task in retail operations is to optimize the assortments exhibited to consumers. To this end, retailers need to understand customers' preferences for different products. Academic/practical relevance: This is particularly challenging when only sales and product-availability data are recorded, and not all products are displayed in all periods. Similarly, in revenue management contexts, firms (airlines, hotels, etc.) need to understand customers' preferences for different options in order to optimize the menu of products to offer. Methodology: In this paper, we study the estimation of preferences under a multinomial logit model of demand when customers arrive over time in accordance with a nonhomogeneous Poisson process. This model has recently caught important attention in both academic and industrial practices. We formulate the problem as a maximum-likelihood estimation problem, which turns out to be nonconvex. Results: Our contribution is twofold: From a theoretical perspective, we characterize conditions under which the maximum-likelihood estimates are unique and the model is identifiable. From a practical perspective, we propose a minorization-maximization (MM) algorithm to ease the optimization of the likelihood function. Through an extensive numerical study, we show that our algorithm leads to better estimates in a noticeably short computational time compared with state-of-the-art benchmarks. Managerial implications: The theoretical results provide a solid foundation for the use of the model in terms of the quality of the derived estimates. At the same time, the fast MM algorithm allows the implementation of the model and the estimation procedure at large scale, compatible with real industrial applications.
机译:问题定义:零售业务中的主要任务是优化向消费者展出的分类。为此,零售商需要了解客户对不同产品的偏好。学术/实际相关性:当只录制销售和产品可用性数据时,这尤其具有挑战性,并且并非所有产品都显示在所有时期。同样,在收入管理环境中,公司(航空公司,酒店等)需要了解客户的偏好,以便优化产品的菜单。方法论:在本文中,我们在客户随着时间的推移时,研究了在需求的多项式Lo​​git模型中估算偏好。该模型最近在学术和工业实践方面越来越重要。我们将问题与最大似然估计问题一起制定,结果是非渗透。结果:我们的贡献是双重的:从理论上的角度来看,我们表征了最大似然估计是唯一的,模型是可识别的。从实际角度来看,我们提出了一种缩短化 - 最大化(MM)算法,以便于优化似然函数。通过广泛的数值研究,我们表明,与最先进的基准相比,我们的算法在明显短的计算时间内能够更好地估计。管理含义:理论结果为在衍生估计的质量方面提供了模型的坚实基础。同时,快速MM算法允许实现模型和估计过程的大规模,与真正的工业应用兼容。

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