Sales Prediction based on Machine Learning

Zixuan Huo
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引用次数: 5

Abstract

With the increasing influence of the Internet on people’s life, the development of e-commerce platforms is more rapid, with users and earnings of these platforms showing a growing trend. In recent years, the strong support of national policies has also provided a good environment for the development of the e-commerce industry. Under the impact of the epidemic this year, the role of the e-commerce industry in the development of the national economy has become more prominent. In such cases, the number and the competitiveness of e-commerce platforms and e-commerce enterprises are increasing. If a platform wants to maintain its advantage in the competition, it must be able to better meet the needs of users, and do a good job in all aspects of coordination and management. At this point, the accurate forecast of the sales volume of e-commerce platforms is particularly important. At present, there are many studies on e-commerce sales prediction, but we are still exploring the prediction model that can be better applied in different scenarios. In this paper, we try and evaluate two linear models, three machine learning models and two deep learning models, finding that machine learning and deep learning models have no advantage in improving the accuracy of sales forecast, but on a predictive basis, models perform better when they include information on calendar and price.
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基于机器学习的销售预测
随着互联网对人们生活的影响越来越大,电子商务平台的发展也越来越迅速,平台的用户和收益都呈现出不断增长的趋势。近年来,国家政策的大力支持也为电子商务行业的发展提供了良好的环境。在今年疫情的冲击下,电子商务行业在国民经济发展中的作用更加突出。在这种情况下,电子商务平台和电子商务企业的数量和竞争力都在增加。一个平台要想在竞争中保持优势,就必须能够更好地满足用户的需求,做好各方面的协调和管理。此时,对电商平台销售额的准确预测就显得尤为重要。目前,关于电子商务销售预测的研究很多,但我们仍在探索能够更好地应用于不同场景的预测模型。在本文中,我们尝试评估了两种线性模型、三种机器学习模型和两种深度学习模型,发现机器学习和深度学习模型在提高销售预测的准确性方面没有优势,但在预测基础上,当模型包含日历和价格信息时表现更好。
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