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Exploring the use of deep neural networks for sales forecasting in fashion retail

机译:探索将深度神经网络用于时装零售中的销售预测

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摘要

In the increasingly competitive fashion retail industry, companies are constantly adopting strategies focused on adjusting the products characteristics to closely satisfy customers' requirements and preferences. Although the lifecycles of fashion products are very short, the definition of inventory and purchasing strategies can be supported by the large amounts of historical data which are collected and stored in companies' databases. This study explores the use of a deep learning approach to forecast sales in fashion industry, predicting the sales of new individual products in future seasons. This study aims to support a fashion retail company in its purchasing operations and consequently the dataset under analysis is a real dataset provided by this company.
机译:在竞争日益激烈的时装零售行业中,公司一直在采用着重于调整产品特性以紧密满足客户要求和偏好的策略。尽管时尚产品的生命周期非常短,但是库存和购买策略的定义可以由收集并存储在公司数据库中的大量历史数据来支持。这项研究探索了使用深度学习方法来预测时装行业的销售情况,并预测未来季节中新产品的销售情况。这项研究旨在支持一家时装零售公司的采购业务,因此,所分析的数据集是该公司提供的真实数据集。

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