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Fast Moving Product Demand Forecasting Model with Multi Linear Regression

机译:多线性回归快速移动产品需求预测模型

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Accuracy of demand forecasting greatly influences the performance of the supply chain system which ultimately has a direct impact on the business perfomance. Accurate forecasting will be able to utilize company resources efficiently. However, in practice many companies admit that their forecasting process is not going as well as they expected. Most companies only use historical data to forecast future demand. Whereas past demand data is not enough to be used as the basis for future forecasts. Therefore it is necessary to build a model that is able to accommodate this phenomenon. This study proposed a multiple linear regression forecasting model for fast moving product. The independent variables used are climate, promotion, cannibalization, holidays, product prices, number of stores, population and income that always change over time. The results show that the proposed multiple linear forecasting model is more than three time more accurate than company forecast.
机译:需求预测的准确性极大地影响了供应链系统的性能,最终对业务的性能直接影响。 准确的预测将能够有效地利用公司资源。 然而,在实践中,许多公司承认其预测过程并没有进入和预期的方式。 大多数公司只使用历史数据来预测未来的需求。 而过去的需求数据不足以被用作未来预测的基础。 因此,有必要建立一种能够适应这种现象的模型。 该研究提出了一种用于快速移动产品的多元线性回归预测模型。 使用的独立变量是气候,促销,蚕食,假期,产品价格,商店数量,人口和收入量随时间而变化。 结果表明,所提出的多个线性预测模型比公司预测更准确三次。

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