利用机器学习技术预测和检测海湾合作委员会伊斯兰银行的信用度模式

IF 2.8 3区 经济学 Q2 BUSINESS, FINANCE
Samar Shilbayeh, Rihab Grassa
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引用次数: 0

摘要

目的银行资信是指对银行履行其财务义务能力的评估。它是对银行财务健康状况、稳定性和风险管理能力的评估。本文旨在研究对评估伊斯兰银行信用至关重要的信用评级模式,从而评估其行业的稳定性。本研究首先使用决策树机器学习算法作为基础学习器,与集合决策树和随机森林进行深入比较。随后,采用 Apriori 算法来发现影响银行信用评级的最重要属性。为了评估之前阐明的模型,采用了十倍交叉验证法。这种方法是将数据集分成十倍,其中九倍用于训练,另一倍用于测试,十倍交替变化。这种方法旨在减少学习和训练阶段可能出现的任何潜在偏差。调查结果显示,随机森林机器学习算法优于其他算法,在预测信用评级方面达到了令人印象深刻的 90.5% 的准确率。值得注意的是,我们的研究揭示了贷存比作为影响信用评级预测的主要属性的重要性。此外,本研究还发现了其他一些关键的银行业务特征,这些特征对本研究的测量结果产生了重大影响。本文的研究结果证明,贷存比似乎是影响信用评级预测的最纯粹的银行属性。此外,还发现存款资产比和利润分享投资账户比率标准在信用评级预测中也很有效,而所有权结构标准则被视为信用评级预测中必不可少的银行属性之一。本研究的独特之处在于发现了以前文献中没有记载的模式,从而拓宽了我们对这一领域的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Creditworthiness pattern prediction and detection for GCC Islamic banks using machine learning techniques

Purpose

Bank creditworthiness refers to the evaluation of a bank’s ability to meet its financial obligations. It is an assessment of the bank’s financial health, stability and capacity to manage risks. This paper aims to investigate the credit rating patterns that are crucial for assessing creditworthiness of the Islamic banks, thereby evaluating the stability of their industry.

Design/methodology/approach

Three distinct machine learning algorithms are exploited and evaluated for the desired objective. This research initially uses the decision tree machine learning algorithm as a base learner conducting an in-depth comparison with the ensemble decision tree and Random Forest. Subsequently, the Apriori algorithm is deployed to uncover the most significant attributes impacting a bank’s credit rating. To appraise the previously elucidated models, a ten-fold cross-validation method is applied. This method involves segmenting the data sets into ten folds, with nine used for training and one for testing alternatively ten times changeable. This approach aims to mitigate any potential biases that could arise during the learning and training phases. Following this process, the accuracy is assessed and depicted in a confusion matrix as outlined in the methodology section.

Findings

The findings of this investigation reveal that the Random Forest machine learning algorithm superperforms others, achieving an impressive 90.5% accuracy in predicting credit ratings. Notably, our research sheds light on the significance of the loan-to-deposit ratio as a primary attribute affecting credit rating predictions. Moreover, this study uncovers additional pivotal banking features that intensely impact the measurements under study. This paper’s findings provide evidence that the loan-to-deposit ratio looks to be the purest bank attribute that affects credit rating prediction. In addition, deposit-to-assets ratio and profit sharing investment account ratio criteria are found to be effective in credit rating prediction and the ownership structure criterion came to be viewed as one of the essential bank attributes in credit rating prediction.

Originality/value

These findings contribute significant evidence to the understanding of attributes that strongly influence credit rating predictions within the banking sector. This study uniquely contributes by uncovering patterns that have not been previously documented in the literature, broadening our understanding in this field.

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来源期刊
CiteScore
5.40
自引率
10.00%
发文量
45
期刊介绍: The International Journal of Islamic and Middle Eastern Finance and Management (IMEFM) publishes quality and in-depth analysis on current issues within Islamic and Middle Eastern finance and management. The journal welcomes strong evidence-based empirical studies and results-focused case studies that share research in product development and clarify best practices. The title is also keen to consider work from emerging authors. IMEFM has just also accepted into Clarivate''s SSCI in 2018, and its IF will be available in summer 2019, with citations dating from 2016. The coverage includes but is not limited to: -Islamic finance: Fundamentals, trends and opportunities in Islamic Finance, Islamic banking and financial markets, Risk management, Corporate finance, Investment strategy, Islamic social finance, Financial planning, Housing finance, Legal and regulatory issues, -Islamic management: Corporate governance, Customer relationship management and service quality, Business ethics and corporate social responsibility, Management styles and strategies in Shariah environments, Labour and welfare economics, Political economy. The journal is the only title aiming to give an interdisciplinary and holistic view on Islamic finance and business management practices in order to inform these two intertwined communities.
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