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Applying least square support vector machines in efficient consumer response system

机译:在高效的消费者响应系统中应用最小二乘支持向量机

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The logistics costs in the field of fast moving consumer goods in our country are much higher than those in developed countries, while implementing an efficient consumer response (ECR) system is one of the most effective approaches towards the final solution. To tackle the difficult problem of forecasting the rolling daily sales of one stock keeping unit that is posed in the ECR system, the least square support vector machines are firstly adopted. The least square support vector machine was used in a way that differ from their traditional usage in that corresponding background information and high order reasoning are integrated for the purpose of boosting the prediction performance. The approach presented in the paper is designed for the ECR system between a Shanghai based large dairy corporation and another supermarket chain, and the feasibility of the approach and the performance promotion by integrating background knowledge have been approved by both the experimental simulation and practical running of the ECR system.
机译:我国快速移动消费品领域的物流成本远远高于发达国家,同时实施高效的消费者反应(ECR)系统是最终解决方案最有效的方法之一。为了解决预测在ECR系统中提出的一个股票保持单元的滚动日常销售的难题,首先采用了最小二乘支持向量机。最小二乘支持向量机以与其传统使用不同的方式使用,因为在该相应的背景信息和高阶推理中被集成为促进预测性能的目的。本文介绍的方法是为上海大型乳制品公司和另一个超市链之间的ECR系统设计,以及通过整合背景知识的方法和性能促进的可行性已通过实验模拟和实际运行批准ECR系统。

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