Determination of order quantity for perishable products by using the support vector machine

Jia‐Yen Huang, Po-Chien Tsai
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引用次数: 4

Abstract

Daily meal boxes are perishable goods which, if not sold within their limited lifetimes, will be discarded. Convenience stores generally make their order decisions according to point of sale (POS) analysis. However, due to the effects of uncertain factors, such as the weather, temperature, the number of customers, and promotion activity of substitute products, the order quantity based on POS may not actually match with real demand, especially for perishable items. In this study, a novel warning system is established by employing the support vector machine (SVM) to modify the order quantity; and the Taguchi method is applied to determine the optimal portfolio of the factors that may influence the prediction accuracy of the SVM. Using actual data from a convenience store, which is a part of the President Chain Store Corporation in Taiwan, the prediction accuracy of the warning system was evaluated. Through numerical experiments, that the proposed methodology can significantly raise the profit is confirmed.
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利用支持向量机确定易腐产品的订货数量
每日餐盒是易腐烂的货物,如果没有在其有限的使用期限内出售,将被丢弃。便利店通常根据销售点(POS)分析来进行订单决策。但是,由于不确定因素的影响,如天气、温度、客户数量、替代产品的促销活动等,基于POS的订单数量可能与实际需求不匹配,特别是易腐品。本文采用支持向量机(SVM)对订单数量进行修正,建立了一种新的预警系统;采用田口法确定影响支持向量机预测精度因素的最优组合。通过数值实验,证实了该方法能显著提高利润。
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