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Decision tree based demand forecasts for improving inventory performance

机译:基于决策树的需求预测,提高库存绩效

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Demand forecasting with minimum error is the key to success in supply chain management. There is no dearth of techniques used for forecasting demand in retail sale. The advent of data mining systems gives rise to the use of business intelligence in various domains of retailing. The current paper makes an attempt to capture the knowledge of classification of the customers using decision tree as an input to the demand forecasting in retail sale. The paper suggests a model which has been used in retail sale for better forecasting of demands and improved performance of inventory in overall supply chain management. The proposed forecasting model with the inventory replenishment system results in the reduction of inventory level and increase in customer service level.
机译:最小误差的需求预测是供应链管理成功的关键。没有用于预测零售业需求的技术。数据挖掘系统的出现导致在各种零售领域中使用商业智能。目前的论文试图使用决策树作为客户的分类知识作为对零售销售需求预测的输入。本文建议采用零售销售模型,以更好地预测需求和整体供应链管理中库存的绩效。拟议的预测模型与库存补充系统导致库存水平的减少和客户服务水平的增加。

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