信用卡客户分类的极端梯度助推器方法的应用

Sri Elina Herni Yulianti, Oni Soesanto, Yuana Sukmawaty
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引用次数: 3

摘要

不良信用卡是指信用卡使用者无法支付信用卡账单,从而给双方造成损失的问题。为了避免不良信用卡造成的损失,提供商必须对使用信用卡的潜在客户或老客户进行仔细的分析。本研究旨在使用机器学习技术,即分类技术,对不良信用卡客户进行分类。其中使用的分类技术之一是XGBoost方法,该方法用于基于梯度提升决策树(GBDT)的回归分析和分类,XGBoost方法有几个超参数,可以配置以提高模型的性能。使用的超参数调优方法是网格搜索交叉验证,然后使用10倍交叉验证进行验证。配置的XGBoost超参数包括n_estimators、max_depth、subsample、gamma、colsample_bylevel、min_child_weight和learning_rate。基于本研究的结果证明,使用超参数调优算法可以提高eXtreme Gradient Boosting算法在信用卡客户分类过程中的性能,准确率达到80.039%,精密度达到81.338%,召回率达到96.854%。关键词:XGBoost,分类,正确率,精度,召回率
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Penerapan Metode Extreme Gradient Boosting (XGBOOST) pada Klasifikasi Nasabah Kartu Kredit
Bad credit card is a problem of inability of credit card users to pay credit card bills that can cause losses to both parties concerned. In order to avoid losses caused by bad credit cards, the provider must conduct a careful analysis of prospective or old customers using credit cards. This study aims to classify bad credit card customers using machine learning techniques, namely classification techniques. One of the classification techniques used is the XGBoost method which is useful for regression analysis and classification based on the Gradient Boosting Decision Tree (GBDT), the XGBoost method has several hyperparameters that can be configured to improve the performance of the model. Hyperparameter tuning method used is grid search cross validation which is then validated using 10-Fold Cross Validation. XGBoost hyperparameters configured include n_estimators, max_depth, subsample, gamma, colsample_bylevel, min_child_weight and learning_rate. Based on the results of this study proves that the use of algorithms with hyperparameter tuning can improve the performance of eXtreme Gradient Boosting algorithm in the process of classification of credit card customers with an accuracy of 80.039%, precision of 81.338% and a recall value of 96.854%.   Keywords: XGBoost, classification, Accuracy, Precision, Recall
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