应用K-means聚类创建基于购买配置文件的产品推荐系统

IF 0.1 Q4 MANAGEMENT
Roniel Venâncio Alencar Santana, H. L. J. Pontes
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引用次数: 0

摘要

在大数据中使用预测性机器学习模型是当今数据科学探索的主要趋势之一。它在商业世界中用于寻找竞争差异的应用与商业智能直接相关,因此公司可以做出更自信的决策。因此,本文提出应用机器学习技术来创建一个基于客户购买档案的产品推荐系统,为产品分销公司建模。为此,使用K-means聚类算法根据客户的购买概况对客户进行分组。最后,推荐系统的原理是基于同一集群中的客户之间的比较分析,并基于他们的地理距离来推荐在一个销售点销售良好但在另一个销售点表现不佳的商品。在应用程序结束时,为本研究中所关注的公司的整个客户范围生成了70个集群。每个集群中的每个客户都会收到一个包含5种推荐产品的列表,这些推荐产品是基于与具有相似购买概况的近邻的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aplicação da Clusterização por K-means para Criação de Sistema de Recomendação de Produtos baseado em Perfis de Compra
The use of predictive machine learning models for big data is today one of the main trends to be explored by data science. Its application to the business world for a search of competitive differential is directly related to Business Intelligence so companies can make more assertive decisions. Thus, this paper proposes to apply a machine learning technique to create a product recommendation system based on customers' purchase profile, modeled for a product distribution company. For this purpose, the K-means clustering algorithm was used to group customers based on their purchase profile. Finally, the recommendation system's principle is based on a comparative analysis between customers in the same cluster and based on their geographic distances to recommend that item that sells well in one point of sales but does not perform so well in another. At the end of the application 70 clusters were generated for the entire range of customers of the company focused in the present study. Each customer in each cluster received a list containing 5 recommended products based on the comparison made with their close neighbors of similar buying profile.
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