An Improved Machine Learning Based Customer Churn Prediction for Insight and Recommendation in E-commerce

Ishrat Jahan, Tahsina Farah Sanam
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Abstract

Since keeping existing customers costs far less in e-commerce, recruiting new customers is no longer a wise approach. Therefore, businesses are increasingly putting greater emphasis on lowering their customer churn rate due to the level of competition present in the business-to-consumer (B2C) e-commerce arena and the significant investments necessary to recruit new customers. Large volumes of data about their current customers’ transactions, searches, frequency of purchases, etc. are typically held by e-commerce businesses. Artificial intelligence (AI) can be used to evaluate customer behavior and predict potential customer attrition, allowing for the adoption of targeted marketing techniques to keep them as customers. In this paper a customer churn forecasting framework has been developed using the best classifier for insight and recommendation in order to improve the accuracy of forecasts of customers who would churn and make it simpler to identify non-churn consumers. There are five components in the framework, including exploratory data analysis (EDA), data preprocessing, model tuning, comparison among different models after model tuning, insight and recommendation. Experimental results shows that the proposed method can predict customer churn with high accuracy.Accuracy and F1- score are used for model evaluation.According to experimental analysis, CatBoost performed the best in Dataset, with 100% accuracy and 100% F1-score. After selecting the best classifier, the recursive feature elimination (RFE) was applied to find the rank of feature for insight and recommendation so that the paper fills a research gap and contributes to the existing literature in the area of developing a customer churn prediction method.
基于改进机器学习的客户流失预测在电子商务中的洞察和推荐
由于在电子商务中保持现有客户的成本要低得多,因此招募新客户不再是明智的做法。因此,由于企业对消费者(B2C)电子商务领域的竞争水平和招募新客户所需的重大投资,企业越来越重视降低客户流失率。电子商务企业通常持有大量有关当前客户交易、搜索、购买频率等的数据。人工智能(AI)可用于评估客户行为并预测潜在的客户流失,从而允许采用有针对性的营销技术来留住他们。在本文中,为了提高客户流失预测的准确性,并使其更容易识别非流失消费者,使用最佳分类器进行洞察和推荐,开发了客户流失预测框架。该框架包括探索性数据分析(EDA)、数据预处理、模型调优、模型调优后不同模型之间的比较、洞察和推荐五个部分。实验结果表明,该方法能较准确地预测客户流失。模型评价采用精度和F1-分数。根据实验分析,CatBoost在Dataset中表现最好,准确率为100%,f1得分为100%。在选择出最佳分类器后,采用递归特征消去法(RFE)对特征进行排序进行洞察和推荐,填补了研究空白,为现有文献开发客户流失预测方法做出了贡献。
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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