Online Retailer Assortment Planning and Managing under Customer and Supplier Uncertainty Effects Using Internal and External Data

Z. Saberi, O. Hussain, Morteza Saberi, Elizabeth Chang
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引用次数: 4

Abstract

One of the main significant and challenging decisions for online retailers is assortment planning (AP). This decision become even more complex while considering demand and supply uncertainties in the AP planning. However, this lead to more efficient results in today's uncertain markets. Online retailers of late have access to massive amounts of internal and external data which they can leverage their power for tackling the inherent demand uncertainty and supplier uncertainty for assortment planning. This paper propose an AP framework for declaring how to use that data in different stage of decision making. Demand function in the framework is augmented using Google Trends (GT) and Google Correalte (GC) data which improve its accuracy. Using GT and GC increase the power of demand function extrapolability. Feature based modeling has been proposed to this end which allows us to use the GT data more easily. The final assortment decisions are then weighted against the supplier uncertainties to adjust for considering the variety and lead-time supplier effect. Techniques such as operations research methods and web science model will be utilised to develop the required approaches. While assortment planning is the combination of marketing and operations research techniques, in this work for the first time we incorporate web science techniques as the third edge of this important process.
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基于内部和外部数据的顾客和供应商不确定性影响下的在线零售商分类计划与管理
对在线零售商来说,最重要且最具挑战性的决策之一就是分类规划。考虑到AP规划中的需求和供应的不确定性,这个决定变得更加复杂。然而,在当今不确定的市场中,这会带来更有效的结果。最近,在线零售商可以访问大量的内部和外部数据,他们可以利用这些数据来解决分类计划中固有的需求不确定性和供应商不确定性。本文提出了一个AP框架,用于声明如何在决策的不同阶段使用这些数据。使用Google Trends (GT)和Google Correalte (GC)数据增强了框架中的需求函数,提高了其准确性。使用GT和GC增加了需求函数的外推能力。为此提出了基于特征的建模方法,使我们能够更方便地使用GT数据。最后的分类决策,然后加权对供应商的不确定性,以调整考虑品种和交货时间供应商的影响。将利用运筹学方法和网络科学模型等技术来开发所需的方法。虽然分类计划是市场营销和运筹学技术的结合,但在这项工作中,我们首次将网络科学技术作为这一重要过程的第三个边缘。
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