Research and Analysis of Vegetable Pricing and Replenishment Decisions

Chunli Jiang, Guo Chen
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Abstract

This paper uses LSTM to conduct a prediction study on the PS dataset to establish a revenue maximization optimization model by limiting the actual cost of a category that fluctuates within 10% of two adjacent days, using seven-day revenue as the objective function, and using the actual daily supplemental cost of each category as the decision variable. Taking the unit cost profit of a category as a category, the ratio of seven-day total profit to seven-day total supplemental cost, and based on cost-plus pricing, the cost price of an individual product for the next seven days can be estimated based on the unit cost profit of the corresponding category, so as to further estimate the pricing as the basis for pricing decisions. The Monte Carlo method is used to optimize the optimization objectives within different profit fluctuation percentage intervals using genetic algorithm, with a view to providing some implications for forecasting research in other fields.
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蔬菜定价和补货决策的研究与分析
本文利用 LSTM 对 PS 数据集进行预测研究,通过限制相邻两天实际成本波动在 10% 以内的品类,以七天收入为目标函数,以各品类每日实际补充成本为决策变量,建立收入最大化优化模型。以品类的单位成本利润为类别,七天总利润与七天总补充成本之比,以成本加成定价法为基础,根据相应品类的单位成本利润,可以估算出单个产品未来七天的成本价格,从而进一步估算出定价,作为定价决策的依据。采用蒙特卡洛法,利用遗传算法在不同利润波动百分比区间内对优化目标进行优化,以期为其他领域的预测研究提供一些启示。
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