需求预测分析:基于深度学习的决策支持系统

Saurabh Kumar, Mr. Amar Nayak
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引用次数: 0

摘要

需求预测是供应链管理和业务运营的重要组成部分,使企业能够就生产、库存管理和资源分配做出明智决策。近年来,预测分析已成为提高需求预测准确性和效率的有力工具。本综述论文探讨了预测分析和深度学习在需求预测中的变革性作用。它探讨了这些先进技术是如何从基于以往销售数据的传统模型发展而来,通过复杂的统计和机器学习方法提供细致入微的预测。深度学习及其神经网络结构带来了自动特征学习、复杂模式处理和可扩展性,从而增强了零售、制造和医疗保健等行业的预测能力。本文回顾了各种深度学习模型,将它们与传统方法进行了比较,并讨论了它们对业务运营和决策的影响。最后,本文展望了预测分析和深度学习在需求预测中的未来趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Analytics for Demand Forecasting: A deep Learning-based Decision Support System
Demand forecasting is a critical component of supply chain management and business operations, enabling organizations to make informed decisions about production, inventory management, and resource allocation. In recent years, predictive analytics has emerged as a powerful tool for enhancing the accuracy and efficiency of demand forecasting. This review paper explores the transformative role of predictive analytics and deep learning in demand forecasting. It examines how these advanced techniques have evolved from traditional models based on past sales data, offering nuanced predictions through sophisticated statistical and machine learning methods. Deep learning, with its neural network structures, brings automatic feature learning, complex pattern handling, and scalability, enhancing forecasting in sectors like retail, manufacturing, and healthcare. The paper reviews various deep learning models, compares them with traditional methods, and discusses their impact on business operations and decision-making. It concludes by looking at future trends in predictive analytics and deep learning in demand forecasting.
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