基于 GWO-LSTM 模型的蔬菜销售量和定价策略研究

Zihan Wang, Xinyi Liu, Yuzhuo Wang
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引用次数: 0

摘要

本文重点对蔬菜品类的销售量和定价策略问题进行了深入研究,旨在构建一个自动定价和补货模型,以实现收益最大化。首先,通过分析蔬菜各品类和单品的销售数据,计算出销售量的均值,并利用图表和皮尔逊相关系数热图直观地展示了蔬菜各品类之间的相关性,发现特定品类之间存在显著的相关性。其次,本文采用成本加成定价法计算每个单品的加价率,并结合线性回归分析揭示加价率与销售量之间的关系,进一步通过 GWO-LSTM 模型预测未来一周的销售量和价格,根据数据为商超提供数据驱动的定价和补货策略。最后,针对特定时间的数据,本文建立了线性规划模型,以制定满足市场需求并实现收益最大化的补货和定价方案。本研究的方法和结论对生鲜食品超级市场等零售业态具有重要的实际应用价值。
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Research on Vegetable Sales Volume and Pricing Strategy Based on GWO-LSTM Modeling
This paper focuses on an in-depth study of the problem of sales volume and pricing strategy for vegetable categories, aiming at constructing an automatic pricing and replenishment model to maximize revenue. First, by analyzing the sales data of each category and single item of vegetables, the mean value of sales volume is calculated, and the correlation between each category of vegetables is visualized using charts and Pearson correlation coefficient heat maps, and it is found that there is a significant correlation between specific categories. Secondly, this paper adopts the cost-plus pricing method to calculate the markup rate of each individual item and combines it with linear regression analysis to reveal the relationship between markup rate and sales volume, and further predicts the sales volume and price in the coming week through the GWO-LSTM model, which provides data-driven pricing and replenishment strategies for the superstore based on the data. Finally, for the data of a specific time, this paper develops a linear programming model to formulate a replenishment and pricing scheme that meets market demand and maximizes revenue. The methodology and findings of this study have important practical applications for retail formats such as fresh food superstores.
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