Python中的季节性销售预测

Piyush, S. Singla, Indu Sharma, Md. Abdul Wassay
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引用次数: 0

摘要

在食品贸易中,预测销售可能是一个至关重要的领域,在促进市场运作和生产力的努力中,副学士学位的新技术大大提高了其质量。该行业历来以祖先的应用数学模型为中心,但近年来,机器学习方法受到了额外的关注。该文件有助于发现影响交易的关键选项,并进一步进行评估,以寻求最有效的交易预测规则。在这项工作中,考虑了相当于SLR, GAR, SVR和RFR的ML机制/方法,并期望它们能很好地解决这些问题。进行副学士学位考试是为了检验规则的有效性。与SLR、GBR、SVR和RFR等价的定理通常被认为可以执行替代机制/方法。这清楚地表明,与其他机制/方法相比,RFR是最被接受的机制/方法。所有研究与其他机制/方法进行比较后,随机森林回归机制/方法进行得很好。因此,RFR被认为是预测产品交易最有效和最适当的机制/方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Seasonal Sale Prediction In Python
Foretelling a sale may be a crucial space within the food trade, and associate degreed new technologies have greatly redoubled its quality in an endeavour to boost market operations and productivity. The industry has historically cantered on an ancestral applied math model however in recent years, ML approaches have received additional attention. This document can facilitate spotting the crucial options that influence the deal and furthermore an appraisal is conducted to seek out the most effective appropriate rule for deal prognosticate. In this work, ML mechanisms/methods equivalent to SLR, GAR, SVR, and RFR were considered and expected to conduct well on these problems. Associate degree exams are conducted to examine the effectiveness of the rules. Theorems equivalent to SLR, GBR, SVR, and RFR are generally known to out conduct alternative mechanisms/methods. This clearly shows that RFR is the most accepted mechanism/method compared to other mechanisms/methods. The random forest regression mechanism/method was conducted well after all studies were compared with other mechanisms/methods. therefore, the RFR is taken into account as the most effective and appropriate mechanism/method for foretelling product deals.
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