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Main Authors: Wang, Meng, Liu, Yuchen, Li, Gangmin, Payne, Terry R., Yue, Yong, Man, Ka Lok
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.00460
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author Wang, Meng
Liu, Yuchen
Li, Gangmin
Payne, Terry R.
Yue, Yong
Man, Ka Lok
author_facet Wang, Meng
Liu, Yuchen
Li, Gangmin
Payne, Terry R.
Yue, Yong
Man, Ka Lok
contents One of the important factors of profitability is the volume of transactions. An accurate prediction of the future transaction volume becomes a pivotal factor in shaping corporate operations and decision-making processes. E-commerce has presented manufacturers with convenient sales channels to, with which the sales can increase dramatically. In this study, we introduce a solution that leverages the XGBoost model to tackle the challenge of predict-ing sales for consumer electronics products on the Amazon platform. Initial-ly, our attempts to solely predict sales volume yielded unsatisfactory results. However, by replacing the sales volume data with sales range values, we achieved satisfactory accuracy with our model. Furthermore, our results in-dicate that XGBoost exhibits superior predictive performance compared to traditional models.
format Preprint
id arxiv_https___arxiv_org_abs_2411_00460
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Unlocking Your Sales Insights: Advanced XGBoost Forecasting Models for Amazon Products
Wang, Meng
Liu, Yuchen
Li, Gangmin
Payne, Terry R.
Yue, Yong
Man, Ka Lok
Machine Learning
One of the important factors of profitability is the volume of transactions. An accurate prediction of the future transaction volume becomes a pivotal factor in shaping corporate operations and decision-making processes. E-commerce has presented manufacturers with convenient sales channels to, with which the sales can increase dramatically. In this study, we introduce a solution that leverages the XGBoost model to tackle the challenge of predict-ing sales for consumer electronics products on the Amazon platform. Initial-ly, our attempts to solely predict sales volume yielded unsatisfactory results. However, by replacing the sales volume data with sales range values, we achieved satisfactory accuracy with our model. Furthermore, our results in-dicate that XGBoost exhibits superior predictive performance compared to traditional models.
title Unlocking Your Sales Insights: Advanced XGBoost Forecasting Models for Amazon Products
topic Machine Learning
url https://arxiv.org/abs/2411.00460