使用机器学习技术预测和分析客户投诉

G. Alarifi, Mst Farjana Rahman, Md. Shamim Hossain
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引用次数: 0

摘要

企业必须优先考虑客户的投诉,因为他们强调了他们的产品或服务可以改进的关键领域。本研究的目的是使用机器学习方法来预测和评估客户投诉数据。目前的研究使用逻辑回归和支持向量机(SVM)来预测客户投诉,并在从消费者金融保护局(CFPB)网站收集五个不同长度的数据集并清理数据后,使用机器学习技术对数据集进行评估。根据本研究,logistic回归和SVM都能准确预测顾客投诉,但SVM的准确率最高。目前的研究还发现,支持向量机为一个月的数据集提供了最高的准确性,逻辑回归为三个月的数据集提供了最高的准确性。此外,机器学习代码被用于在多个维度上显示和制表消费者投诉。
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Prediction and Analysis of Customer Complaints Using Machine Learning Techniques
Businesses must prioritize customer complaints because they highlight critical areas where their products or services may be improved. The goal of this study is to use machine learning approaches to anticipate and evaluate customer complaint data. The current study used logistic regression and support vector machine (SVM) to predict customer complaints, and evaluated the datasets using machine learning techniques after collecting five distinct length datasets from the Consumer Financial Protection Bureau (CFPB) website and cleaning the data. Both logistic regression and SVM can accurately predict customer complaints, according to this study, but SVM gives the greatest accuracy. The current study also found that SVM provides the highest accuracy for a one-month dataset and Logistic regression provides for a three-month dataset. In addition, machine learning codes were utilized to display and tabulate consumer complaints across many dimensions.
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