Quotidian Sales Forecasting using Machine Learning

M. Spuritha, Cheruku Sai Kashyap, Tejas Rakesh Nambiar, D. Kiran, N. Rao, G. Reddy
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引用次数: 2

Abstract

Retailers have been experiencing a drop in their sales due to the rise of E-commerce facilities. This poses a problem where the retail stores need to efficiently manage and price their products to increase their sales. Hence the need for efficient sales prediction and dynamic pricing arises. A forecasting model which can effectively predict the sales of a retail store will help retailers compete in the market. With this intent, the paper proposes a model based on XGBoost whose learners are fitted to the store- product subsets with optimum parameters to increase the overall performance of sales prediction. The proposed model predicted sales for 10 stores with 50 products, with average MAPE, RMSE and R2 values of 11.98 %, 6.63 and 0.76 respectively. In addition, dynamic pricing is applied to the forecasted results which specifies the optimum price of a product based on its demand.
使用机器学习进行日常销售预测
由于电子商务设施的兴起,零售商的销售额一直在下降。这就产生了一个问题,零售店需要有效地管理和定价他们的产品,以增加他们的销售。因此,需要有效的销售预测和动态定价。一个能够有效预测零售商店销售额的预测模型将有助于零售商在市场上的竞争。为此,本文提出了一种基于XGBoost的模型,该模型将学习者拟合到具有最优参数的商店-产品子集中,以提高销售预测的整体性能。该模型预测了10家门店50种产品的销售额,平均MAPE、RMSE和R2值分别为11.98%、6.63和0.76。此外,对预测结果应用动态定价,根据需求确定产品的最优价格。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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