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首页> 外文期刊>International Journal of Production Research >Relational analysis model of weather conditions and sales patterns based on nonnegative tensor factorization
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Relational analysis model of weather conditions and sales patterns based on nonnegative tensor factorization

机译:基于非负张量分解的天气条件与销售模式的关系分析模型

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摘要

It is necessary to analyze the relationships between the retail sales of various items and weather conditions. However, the relationship between the sales of each item and the weather condition may vary among stores. Additionally, it is necessary to model the statistical relationships between a wide variety of goods and weather conditions by using past sales data. In such a case, it becomes unrealistic to construct a forecast model for every individual item owing to the breadth of items and the number of retail shops. This study proposes a model to analyze the relationships between the sales of various items and weather conditions. This method can be used to decompose the data into three matrices based on the nonnegative tensor factorization (NTF) method. The results of the analysis clarified that the proposed model can identify important items whose demand is strongly influenced by weather conditions, thereby increasing the effectiveness of inventory management. Additionally, the store clusters estimated by the proposed model can facilitate the construction of regression models that demonstrate the relationship between the sales of each item and weather conditions.
机译:有必要分析各种物品和天气条件的零售销售之间的关系。但是,每个项目的销售与天气状况之间的关系可能在商店之间变化。此外,必须通过使用过去的销售数据来模拟各种商品和天气条件之间的统计关系。在这种情况下,由于零售商店的宽度和数量,因此为每个单独的项目构建预测模型变得不现实。本研究提出了一种模型来分析各种物品和天气条件之间的关系。该方法可用于基于非负张量因子(NTF)方法将数据分解为三个矩阵。分析结果澄清说,该建议的模型可以识别需求受到天气条件强烈影响的重要项目,从而提高了库存管理的有效性。另外,由所提出的模型估计的商店集群可以促进建设回归模型,这些模型展示了每个物品和天气条件的销售之间的关系。

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