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基于机器学习组合模型的电商商品销量预测
引用本文:韩亚娟,高欣. 基于机器学习组合模型的电商商品销量预测[J]. 计算机系统应用, 2022, 31(1): 315-321. DOI: 10.15888/j.cnki.csa.008345
作者姓名:韩亚娟  高欣
作者单位:上海大学 管理学院, 上海 200444
摘    要:如何准确高效地预测销量是企业一直以来关注的重要问题.传统的时间序列预测方法虽然在研究和实践中占主导地位,但是存在一定的局限性.随着大数据的发展,电商企业能获取前所未有的数据量和数据特征,仅利用过去的行为和趋势很难准确地对销量进行预测.本文提出一种基于随机森林、GBDT、XGBoost算法的成本厌恶偏向性组合预测模型,并...

关 键 词:销售预测  机器学习  组合模型  特征构建  样本赋权
收稿时间:2021-03-20
修稿时间:2021-04-29

E-commerce Commodity Sales Forecast Based on Machine Learning Combination Model
HAN Ya-Juan,GAO Xin. E-commerce Commodity Sales Forecast Based on Machine Learning Combination Model[J]. Computer Systems& Applications, 2022, 31(1): 315-321. DOI: 10.15888/j.cnki.csa.008345
Authors:HAN Ya-Juan  GAO Xin
Affiliation:School of Management, Shanghai University, Shanghai 200444, China
Abstract:How to accurately and efficiently forecast sales data is an important issue for enterprises. Although the traditional time series prediction method is dominant in research and practice, it has some limitations. With the development of big data, e-commerce enterprises can obtain unprecedented data volume and data characteristics, and it is difficult to accurately predict sales only by using past behaviors and trends. This paper proposes a risk aversion-biased combination forecasting model based on the random forest, GBDT, and XGBoost algorithm and used the cost data of each commodity to realize the accurate sample weighting and to output the forecasting results. The experimental results show that the combination forecasting model can predict sales more accurately, which is of great significance for e-commerce enterprises to reduce the cost of commodity management.
Keywords:sales forecast  machine learning  combination model  feature construction  samples weighting
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