用机器学习方法加速商业贷款申请中的资产负债表调整过程

I. Tozlu, Ş. Öğüdücü, Atılberk Çelebi, Sacide Kalayci, S. Arslan
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引用次数: 1

摘要

金融分析师进行资产负债表调整,包括账户余额的减少、增加或变动,然后在评估商业贷款申请时计算申请人的信誉评分。分析人员通常是手工检查财务文件,这给金融机构造成了时间和劳动力的浪费。本文提出了一个解决方案模型,该模型可以帮助财务分析人员检测需要调整的资产负债表项目,从而降低成本,加快资产负债表调整过程。机器学习算法是求解模型的关键要素。此外,提出了一种新的特征集,可以检测需要调整的资产负债表项目,用于机器学习模型。通过实验对所提出的求解模型和特征集进行了验证。结果表明,以随机森林为元学习器,LGBM、XGBoost和CatBoost为基础学习器的堆叠泛化模型是具有新特征集的表现最好的模型。实验中使用的数据集来自土耳其最大的银行之一。
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Accelerating Balance Sheet Adjustment Process in Commercial Loan Applications with Machine Learning Methods
Financial analysts perform balance sheet adjustment that includes reductions, additions or movements of balances in accounts before applicants' credibility scores are calculated in the assessment of commercial loan applications. The analysts usually go through financial documents manually and it causes waste of time and labor for financial institutions. This paper presented a solution model that detects balance sheet items to be adjusted in order to reduce costs and accelerate the balance sheet adjustment process by helping financial analysts. Machine learning algorithms are the key elements for the solution model. Besides, a new feature set that can detect balance sheet items to be adjusted is proposed to be used for machine learning models. The proposed solution model and feature set were tested with experiments. The results show that Stacked Generalization model, Random Forest as meta-learner and LGBM, XGBoost and CatBoost as base learners, is the top performer model with the new feature set. The dataset used in experiments is obtained from one of the largest banks of Turkey.
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