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Auto parts demand forecasting based on nonnegative variable weight combination model in auto aftermarket

机译:基于自动售后市场非负变可变权重模型的自动零件需求预测

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Accurate demand forecasting for auto parts can improve the performance of the whole auto supply chain and is very important for the management improvement for the companies in auto aftermarket who mainly forecast demands by experience. It has both economic significance and social means for the auto industry considering the important role of auto aftermarket in the whole auto industry. After exploring the complicated characteristics of the auto parts and also the strengths of some forecasting methods, ARIMA, multiple regression and Support Vector Regression are selected finally to develop a nonnegative variable weight combination model to forecast the demand of auto parts for the auto aftermarket in China. The following case study proves that this model has higher accuracy and more stability.
机译:准确的汽车零部件需求预测可以提高整个汽车供应链的性能,对汽车售后市场公司的管理改进非常重要,主要预测经验的需求。 考虑到汽车售后市场在整个汽车行业中的重要作用,它具有经济意义和社会手段。 在探索汽车部件的复杂特性之后以及一些预测方法的优点,最终选择了ARIMA,多元回归和支持向量回归,以开发非负可变权重组合模型,以预测中国汽车售后市场的汽车零件的需求 。 以下案例研究证明,该模型具有更高的准确性和更稳定性。

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