Demand Forecasting of Retail Sales Using Data Analytics and Statistical Programming

P. Lalou, S. Ponis, O. Efthymiou
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引用次数: 10

Abstract

Abstract Forecasting the demand of network of retail sales is a rather challenging task, especially nowadays where integration of online and physical store orders creates an abundance of data that has to be efficiently stored, analyzed, understood and finally, become ready to be acted upon in a very short time frame. The challenge becomes even bigger for added-value third party logistics (3PL) operators, since in most cases and demand forecasting aside, they are also responsible for receiving, storing and breaking inbound quantities from suppliers, consolidating and picking retail orders and finally plan and organize shipments on a daily basis. This paper argues that data analytics can play a critical role in contemporary logistics and especially in demand data management and forecasting of retail distribution networks. The main objective of the research presented in this paper is to showcase how data analytics can support the 3PL decision making process on replenishing the network stores, thus improving inventory management in both Distribution Centre (DC) and retail outlet levels and the workload planning of human resources and DC automations. To do so, this paper presents the case of a Greek 3PL provider fulfilling physical store and online orders on behalf of a large sporting goods importer operating a network of 129 stores in five different countries. The authors utilize the power of ‘R’, a statistical programming language, which is well-equipped with a multitude of libraries for this purpose, to compare demand forecasting methods and identify the one producing the smallest forecast error.
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使用数据分析和统计规划的零售需求预测
预测零售网络销售的需求是一项相当具有挑战性的任务,特别是在现在,在线和实体店订单的整合产生了大量的数据,这些数据必须被有效地存储、分析、理解,并最终在很短的时间内准备好采取行动。对于附加值第三方物流(3PL)运营商来说,挑战变得更大,因为在大多数情况下,除了需求预测之外,他们还负责接收、存储和分解来自供应商的进货数量,整合和挑选零售订单,最终每天计划和组织发货。本文认为,数据分析可以在当代物流中发挥关键作用,特别是在零售分销网络的需求数据管理和预测中。本文研究的主要目的是展示数据分析如何支持第三方物流在补充网络商店方面的决策过程,从而改善配送中心(DC)和零售店级别的库存管理,以及人力资源和DC自动化的工作量规划。为此,本文介绍了希腊第三方物流供应商代表一家大型体育用品进口商在五个不同国家经营129家商店网络,履行实体店和在线订单的案例。作者利用“R”(一种统计编程语言,它配备了大量用于此目的的库)的功能来比较需求预测方法并确定产生最小预测误差的方法。
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来源期刊
CiteScore
6.20
自引率
2.70%
发文量
25
审稿时长
10 weeks
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