PAPQ: Predictive analytics of product quality in industry 4.0

Md.Anjar Ahsan , Khaleel Ahmad , Jameel Ahamed , Mohd Omar , Khairol Amali Bin Ahmad
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引用次数: 0

Abstract

In e-commerce, Industry 4.0 is all about combining analytics, artificial intelligence, and machine learning to simplify procedures and enable product quality review. In addition, the importance of anticipating client behavior in the context of e-commerce is growing as individuals migrate from visiting physical businesses to shopping online. By providing a more personalized purchasing experience, it can increase consumer satisfaction and sales, leading to improved conversion rates and competitive advantage. Using data from e-commerce platforms such as Flipkart and Amazon, it is possible to build models for forecasting customer behavior. This study examines machine learning techniques for product quality prediction and gives an insight into the performance differences of machine learning-based models by doing descriptive data analysis and training each model separately on three datasets viz Mobile, Health Equipments, and Book Datasets. Support Vector Machine, Nave Bayes, k-Nearest Neighbors, Random Forest, and Random Tree were the machine learning methods utilized in this work. The results indicate that a Support Vector Machine Model provides the greatest fit for the prediction task, with the best performance, reasonable latency, comprehensibility, and resilience for the first two datasets, but Random Forest provides the highest performance for the Book dataset.

PAPQ:工业4.0中产品质量的预测分析
在电子商务中,工业4.0就是将分析、人工智能和机器学习相结合,以简化程序并实现产品质量审查。此外,随着个人从访问实体企业转移到网上购物,在电子商务背景下预测客户行为的重要性越来越大。通过提供更个性化的购买体验,它可以提高消费者满意度和销售额,从而提高转化率和竞争优势。利用Flipkart和亚马逊等电子商务平台的数据,可以建立预测客户行为的模型。本研究考察了用于产品质量预测的机器学习技术,并通过在三个数据集(即Mobile、Health Equipments和Book Dataset)上进行描述性数据分析和单独训练每个模型,深入了解了基于机器学习的模型的性能差异。支持向量机、Nave Bayes、k近邻、随机森林和随机树是本工作中使用的机器学习方法。结果表明,支持向量机模型为预测任务提供了最大的拟合,前两个数据集具有最佳的性能、合理的延迟、可理解性和弹性,但随机森林为Book数据集提供了最高的性能。
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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CiteScore
18.20
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