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A Sequential Hybrid Forecasting System for Demand Prediction

机译:需求预测的顺序混合预测系统

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摘要

Demand prediction plays a crucial role in advanced systems for supply chain management. Having a reliable estimation for a product's future demand is the basis for the respective systems. Various forecasting techniques have been developed, each one with its particular advantages and disadvantages compared to other approaches. This motivated the development of hybrid systems combining different techniques and their respective advantages. Based on a comparison of ARIMA models and neural networks we propose to combine these approaches to a sequential hybrid forecasting system. In our system the output from an ARIMA-type model is used as input for a neural network which tries to reproduce the original time series. The applications on time series representing daily product sales in a supermarket underline the excellent performance of the proposed system.
机译:需求预测在先进的供应链管理系统中扮演着至关重要的角色。对产品的未来需求进行可靠的估算是各个系统的基础。已经开发了各种预测技术,与其他方法相比,每种技术都有其特殊的优点和缺点。这激发了混合系统的发展,这些系统结合了不同的技术及其各自的优势。在比较ARIMA模型和神经网络的基础上,我们建议将这些方法组合到顺序混合预测系统中。在我们的系统中,ARIMA型模型的输出用作神经网络的输入,该神经网络试图重现原始时间序列。代表超市日常产品销售的时间序列应用程序突出了所建议系统的出色性能。

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