梯度升压
决策树
Boosting(机器学习)
忠诚商业模式
计算机科学
忠诚
机器学习
人工智能
信用卡
预测建模
数据挖掘
随机森林
营销
业务
付款
服务质量
万维网
服务(商务)
作者
Marcos Machado,Salma Karray,Ivaldo Tributino de Sousa
标识
DOI:10.1109/iccse.2019.8845529
摘要
This study presents an implementation of a Machine Learning model to predict customer loyalty for a financial company. We compare the accuracy of two Gradient Boosting Decision Tree Models: XGBoosting and the LightGBM algorithm, which has not yet been used for customer loyalty prediction. We apply these methods to predict credit card customers' loyalty scores for a financial company. The dataset has been made available through a Kaggle's competition. We assess customer loyalty prediction accuracy through RMSE and find that LightGBM performs better than XGBoosting.
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