利用机器学习和遗传算法混合模型预测银行业绩

Ummey Hany Ainan, Md. Nur-E-Arefin
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引用次数: 1

摘要

如今,银行业被认为是一个国家现代经济的支柱。正确预测一个国家的银行业绩可以反映出这个国家最近的未来。过去,统计测量是用来预测银行业绩的。如今,机器学习(ML)方法被用于银行部门,以提高准确性。不同的混合动力模型也被广泛使用,以获得更好的性能。本文将随机森林(Random Forest, RF)、支持向量机(Support Vector Machine, SVM)和逻辑回归(Logistic Regression, LR)这三种著名的机器学习分类器与遗传算法(Genetic Algorithm, GA)相结合,构建了GA+RF、GA+SVM和GA+LR三种混合模型。这项工作中使用的数据集包括50家土耳其银行,30家美国银行和20家欧洲银行。该数据有24项绩效指标,衡量2010年至2020年的绩效。为了找到银行的评级,在这个数据集中应用了CAMEL技术。本研究还采用遗传算法作为优化器和特征选择器。最后对模型进行了特征选择和非特征选择以及优化和非优化的评估。在本研究中,经过优化但不进行特征选择的GA+SVM混合模型在所有模型中准确率最高,达到100%的测试准确率。另一方面,GA+LR模型具有特征选择但未进行优化的测试准确率为81.81%,在整个研究中最低。
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Prediction of Bank Performance Using Machine Learning and Genetic Algorithm Hybrid Models
Now-a-days banking sector is considered as the back-bone of modern economy of a country. Predicting correct performance of banks of a country can show the nearest future of a country. In past statistical measurement is used to predict bank performance. Nowadays Machine Learning (ML) approaches are used in banking sector for better accuracy. Different Hybrid models are also widely used for better performance. In this work three famous Machine Learning classifiers named Random Forest (RF), Support Vector Machine (SVM) and Logistic Regression (LR) are combined with Genetic Algorithm (GA) to make three hybrid models named GA+RF, GA+SVM and GA+LR. The dataset used in this work are consist of 50 Turkish banks, 30 American banks and 20 European banks. The data have 24 performance indicators that measures performance from the year of 2010 to 2020. CAMEL technique is applied in this dataset in order to find ratings of the banks. In this study Genetic Algorithm is also used as optimizer and feature selector. At the end the models are evaluated with and without feature selection as well as with and without optimization. In this study GA+SVM hybrid model with optimization but without feature selection provides best accuracy among all the models which is 100% test accuracy. On the other hand, GA+LR model provide 81.81 % test accuracy with feature selection but without optimization which is lowest in the whole study.
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