Market basket analysis with association rules in the retail sector using Orange. Case Study: Appliances Sales Company

Marcos Martinez, María Belén Escobar, María-Elena Fernández-García, Diego Pinto
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Abstract

This research is conducted to analyze the shopping basket by using association rules in the retail area, more specifically in a home goods sales company such as appliances, computer items, furniture, and sporting goods, among others. With the rise of globalization and the advancement of technology, retail companies are constantly struggling to maintain and raise their profits, as well ordering the products and services that the customer wants to obtain. In this sense, they need a new approach to identify different objectives in order to be more competitive and successful, looking for new decision-making strategies. To achieve this goal, and to obtain clear and efficient strategies, by providing large amounts of data collected in business transactions, the need arises to intelligently analyze such data in order to extract useful knowledge that will support decision-making and, an understanding of the association patterns that occur in sales-customer behavior. Predicting which product will make the most profit, products that are sold together, this type of information is of great value for storing products in inventory. Knowing when a product is out of fashion can support inventory management effectively. In this sense, this work presents the rules of association of products obtained by analyzing the data with the FPGrowth algorithm using the Orange tool.
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市场篮子分析与关联规则在零售部门使用橙色。案例研究:家电销售公司
本研究是通过在零售领域使用关联规则来分析购物篮,更具体地说,是在家电、电脑产品、家具和体育用品等家居用品销售公司。随着全球化的兴起和技术的进步,零售公司不断努力维持和提高利润,以及订购客户想要获得的产品和服务。从这个意义上说,他们需要一种新的方法来确定不同的目标,以便更有竞争力和更成功,寻找新的决策战略。为了实现这一目标,并通过提供在业务事务中收集的大量数据来获得清晰有效的策略,需要智能地分析这些数据,以便提取有用的知识,这些知识将支持决策,并理解销售-客户行为中出现的关联模式。预测哪一种产品会产生最大的利润,这些产品一起销售,这种类型的信息对于储存库存的产品有很大的价值。了解产品何时过时可以有效地支持库存管理。在这个意义上,本工作提出了通过使用Orange工具使用FPGrowth算法分析数据获得的产品关联规则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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