Data mining application with machine learning algorithms to manage interest rate risk

Enes Koçoğlu, Filiz Ersöz
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Abstract

In trade, the risks taken may increase the expected income; however, they may also cause large amounts of losses as well. Banks transfer the capital and the deposits they collect from their clients to the individuals or institutions in need of profit, taking certain risks into account. One of the important risks taken in this process of capital transfer is the market's change in interest or profit share rates. If the bank transfers the deposit collected with a certain commitment to the market at a lower rate, it will make a loss. Models for predicting future interest or profit share rates gain importance for preventing this situation. The aim of this study is to determine which variables will be taken into account for the loan interest rate that banks will offer to their customers during the lending process, and to create a machine learning model that can predict the loan interest rate that the bank will offer to its customers by using these variables. Multiple Linear Regression analysis was performed to demonstrate the relationship between the variables selected based on the literature review, expert opinions, and the interest rate. In order to facilitate decision-makers in practice, Random Forests, Decision Trees, K-Nearest Neighbours (KNN), Artificial Neural Networks (ANN), and Support Vector Machine (SVM) algorithms from machine learning algorithms were compared by using the prediction model. Accuracy Rate, Cohen's Kappa, Precision, Sensitivity, and F-Measure measurements were used to compare the algorithms used in the study. According to the analysis results, it was observed that the Random Forest algorithm was more successful on the first model consisting of weekly data. The Decision Tree algorithm succeeded more on the second model consisting of monthly data prediction performance. In the model consisting of weekly data, USD Selling Price, Stock Index (BIST100), and Central Bank Gold Reserve from the Multiple Linear Regression variables were found significant in affecting the interest rate.
数据挖掘应用与机器学习算法管理利率风险
在贸易中,承担的风险可能会增加预期收益;然而,它们也可能造成大量的损失。银行在考虑一定风险的情况下,将从客户那里收取的资金和存款转移给需要盈利的个人或机构。在这一资本转移过程中,一个重要的风险是市场利率或利润分成率的变化。如果银行将有一定承诺的存款以较低的利率转移到市场上,就会出现亏损。预测未来利息或利润分成率的模型对于防止这种情况变得非常重要。本研究的目的是确定银行在贷款过程中向客户提供的贷款利率将考虑哪些变量,并创建一个机器学习模型,该模型可以通过使用这些变量来预测银行将向客户提供的贷款利率。通过多元线性回归分析来证明根据文献综述、专家意见选择的变量与利率之间的关系。为了方便决策者在实践中进行决策,利用预测模型对机器学习算法中的随机森林、决策树、k近邻(KNN)、人工神经网络(ANN)和支持向量机(SVM)算法进行了比较。准确率、Cohen’s Kappa、Precision、Sensitivity和F-Measure测量值用于比较研究中使用的算法。从分析结果可以看出,随机森林算法在由每周数据组成的第一个模型上更为成功。决策树算法在由月数据预测性能组成的第二个模型上取得了更大的成功。在由每周数据组成的模型中,多元线性回归变量中的美元卖出价、股票指数(BIST100)和央行黄金储备对利率的影响显著。
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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