Product marketing prediction based on XGboost and LightGBM algorithm

Yunxin Liang, Jiyu Wu, Wei Wang, Yujun Cao, B. Zhong, Zhenkun Chen, Zhenzhang Li
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引用次数: 22

Abstract

The XGboost and LightGBM algorithm performs predictive analysis of sales volume in the product sales data set. The principle of XGboost and LightGBM algorithm is studied, the predicted objects and conditions are fully analyzed, and the algorithm parameters and data set characteristics are compared. The results show that n_estimators have a small effect on the prediction of model XGboost, while gamma has a large effect on the prediction of model XGboost. Learning_rate has a small impact on LightGBM prediction, while n_estimators have a large impact on LightGBM prediction. Finally, the optimal parameters were obtained, and the sales volume from January to October 2015 was predicted based on the optimal parameters, and RMSE values of the two algorithms were obtained. Statistical analysis shows that there is no significant difference between the two algorithms in the optimal prediction results after adjusting their own parameters.
基于XGboost和LightGBM算法的产品营销预测
XGboost和LightGBM算法对产品销售数据集中的销量进行预测分析。研究了XGboost和LightGBM算法的原理,充分分析了预测对象和预测条件,比较了算法参数和数据集特性。结果表明,n_estimators对模型XGboost的预测影响较小,而gamma对模型XGboost的预测影响较大。Learning_rate对LightGBM预测影响较小,而n_estimators对LightGBM预测影响较大。最后,得到最优参数,并根据最优参数对2015年1 - 10月的销量进行预测,得到两种算法的RMSE值。统计分析表明,两种算法在调整各自参数后的最优预测结果没有显著差异。
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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