G. Alves, A. M. Maciel, Jorge Cavalcanti Barbosa Fonseca, Erika Carlos Medeiros, Patricia Cristina Moser, Rômulo César Dias De Andrade, Fernando Ferreira De Carvalho, Fernando Pontual de Souza Leão Junior, Marco A. O. Domingues
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引用次数: 0
摘要
总收入指标有助于了解公司状况,而生成销售收入预测则是帮助管理者指导业务的一种策略。这项工作旨在开发一套机器学习(ML)模型,用于预测实体零售业的销售情况。方法 - 为开展这项工作,提出了一种创建、比较和评估 ML 模型的方法。研究结果 - 在分析预测方案时,我们发现每小时预测比每日预测表现更好。我们重点介绍了 LIGHTGBM 模型,该模型在 F1 分数指标中得分最高,分别为 82.95%、79.26% 和 76.53%,分别代表提前一小时、两小时和三小时的情况。价值--预计预测模型将帮助管理者找到支持实体零售业运营决策的见解,有助于开展优化公司流程的行动。
Unlocking Retail Success: Empowering Decision-Making with Advanced Sales Forecast Models
The gross revenue indicator contributes to the understanding of the company’s situation, and generating sales revenue forecasts is a strategy that helps the manager in directing the business. This work aims to develop a set of Machine Learning (ML) models to forecast sales in physical retail. Methodology – To carry out this work, a methodology was proposed to create, compare and evaluate ML models. Findings – When analyzing the forecast scenarios, it was observed that Hourly forecasts performed better than Day forecasts. We highlight the LIGHTGBM model, which presented the best scores in the F1-score metric with 82.95%, 79.26% and 76.53% scenario representing one hour, two hours and three hours ahead, respectively. Value – It is expected that the forecast models will help managers to find insights to support the operational decisions of physical retail contributing to carry out actions to optimize companies’ processes.