俄罗斯食品零售商的聚类分析

IF 0.5 Q4 MANAGEMENT Upravlenets-The Manager Pub Date : 2022-05-06 DOI:10.29141/2218-5003-2022-13-2-5
V. Kovalev, Ksenia V. Novikova, E. Antineskul
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引用次数: 2

摘要

关于食品零售商有效聚类的理论和实践方面的研究还比较缺乏。本文的重点是通过控制零售空间、分类深度和平均账单等相对同质的对象,采用聚类分析方法来提高零售网点的财务绩效。在方法上,该研究依赖于市场营销理论。研究方法基于对食品零售商的聚类分析的适应性。信息库包括零售商官方网站、专家资料和分析资料,以及statista.com和2gis.ru数据库。该研究展示了对俄罗斯零售市场变化的竞争分析结果,并确定了行业领导者和最有前途的零售业态。我们提出了一个数学模型,使用k-means聚类来计算评价标准,并将其作为建立食品零售商商店排名的基础。该模型是用一个零售公司在彼尔姆(彼尔姆边疆区,俄罗斯)的案例研究进行测试。确定的评估标准是销售量、零售空间、平均账单、边际性、sku数量和服务成本。计算了零售业发展对这些标准的依赖程度。根据食品商店聚类的结果,我们挑选出五个具有类似零售业态运营管理方法的集群,并确定必要的库存和物流。所建立的门店集群模式有助于门店配置标准的实施,提高零售商的经营绩效和顾客服务水平。
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Cluster analysis of food retailers in Russia
There is lack of studies on the theoretical and practical aspects of effective clustering of food retailers. The paper focuses on adapting the cluster analysis method to improve the financial performance of retail outlets by controlling relatively homogeneous objects, such as retail space, assortment depth, and average bill. Methodologically, the study relies on the theory of marketing. The research methodology rests on the adaptation of cluster analysis for food retailers. The information base includes retailers’ official websites, expert and analytical materials, as well as databases statista.com and 2gis.ru. The study presents the results of a competitive analysis of changes in the Russian retail market and identifies industry leaders and the most promising retail formats. We propose a mathematical model by using k-means clustering to calculate evaluation criteria and use them as the basis for building a ranking of a food retailer’s stores. The model was tested using the case study of a retail company in Perm (Perm krai, Russia). The identified evaluation criteria are sales volume, retail space, average bill, marginality, the number of SKUs, and service costs. The level of the dependence of retail development on these criteria is calculated. Based on the results of food stores clustering, we single out five clusters with similar approaches to the operational management of retail formats and determine the necessary inventory and logistics. The developed model of stores clustering contributes to the implementation of outlets provision standards and enhances retailers’ performance and the level of customer service.
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来源期刊
自引率
40.00%
发文量
47
审稿时长
16 weeks
期刊最新文献
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