基于共识的基于聚合决策和交叉验证技术的银行贷款预测模型

Ibrahim Hadiza Ndanusa, Solomon Adelowo Adepoju, Adeniyi Oluwaseun Ojerinde
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引用次数: 0

摘要

考虑到信贷业务的增长,以最小风险授予贷款许可的机器学习模型在银行业中越来越受欢迎。基于机器学习的模型已被证明在解决各种银行风险预测问题方面非常有用。机器学习预测有时是不公平和有偏见的,因为它们严重依赖于随机选择的训练数据样本。然而,这个问题可以通过使用交叉验证策略来解决。预测可以通过组合来自不同机器学习算法的决策(集成决策)来改进。建议的基于共识的预测模型使用标准性能指标进行评估,建议的模型达到83%的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Consensus Based Bank Loan Prediction Model Using Aggregated Decision Making and Cross Fold Validation Techniques
Considering the growth of the credit businesses, machine learning models for granting loan permissions with the minimum amount of risk are becoming increasingly popular among banking sectors. Machine Learning based models has proven to be useful in resolving a variety of banking risk prediction issues. ML Predictions are sometimes unfair and biased because they are heavily dependent on randomly selected training data sample for every prediction made. However, this problem can be address by utilizing a cross-validation strategy. Prediction can be improved by combining decisions from different machine learning algorithms (ensemble decision making). The proposed consensus-based prediction model is evaluated using standard performance metrics, and the proposed model achieved an accuracy of 83 percent.
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