制造业信用评估的强化学习与预测分析方法

Abdul Razaque , Aliya Beishenaly , Zhuldyz Kalpeyeva , Raisa Uskenbayeva , Moldagulova Aiman Nikolaevna
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引用次数: 0

摘要

商品制造商和进口商信用体系的根本问题是信用评估效率低下。传统技术经常产生不准确的风险评估和信用评分,导致贷款人的财务损失,失去业务增长的可能性,以及不太有利的客户条件。为了解决这一问题,应该建立全面的信用评价评分制度,提高进口商的信心。本文提出了一种基于预测的强化学习(PRL)模型,以帮助制造商和进口商在避免违约风险的同时获得更准确、更可靠的信用评分。此外,提出的PRL模型提高了决策、系统效率和风险承受能力。为了实现这些前沿目标,提出的PRL模型结合了三种算法。算法1收集和汇总数据,如果信用评分较差,则指出需要改进的领域。算法2使用强化学习来验证和提高银行分数。算法3侧重于对银行评分进行预测建模,保证信贷决策系统的可操作性和不断改进。此外,强化学习利用局部可解释的模型不可知解释(LIME)和形状可加性解释(SHAP)的特征来生成局部可靠的解释,并将每个特征的贡献属性化,以确定模型的输出。Python平台测试提议的PRL以实现目标。结果表明,PRL模型显著提高了信用评估精度,准确率超过99.5%,超过了OCLA(96.12%)、PSML(84.12%)和EMPCC(91.67%)等现有方法。此外,PRL模型提高了杠杆率,从2015年的2.75%上升到2024.5年的3.36%,将应收账款周转率从2015年的4.38%提高到2024.5年的7.4%,超过了其他信用评估方法。这项研究强调了将预测分析和强化学习相结合以彻底改变信用评估的新新性,为制造商和进口商提供了可扩展和可靠的解决方案。研究结果表明,PRL模型是创造风险容忍和高效金融环境的一种变革性方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A reinforcement learning and predictive analytics approach for enhancing credit assessment in manufacturing
The fundamental issue with a credit system for manufacturers and importers of commodities is inefficient credit assessment. Traditional techniques frequently produce inaccurate risk assessments and credit scores, resulting in financial losses for lenders, missing business growth possibilities, and less favorable client conditions. To overcome this issue, a comprehensive credit assessment scoring system should be implemented to increase importers’ confidence. The article proposes a predictive-based reinforcement learning (PRL) model to help manufacturers and importers acquire more accurate and dependable credit scores while avoiding default risk. Furthermore, the proposed PRL model enhances decision-making, system efficiency, and risk-tolerant financial conditions. To attain these cutting-edge objectives, the proposed PRL model combines three algorithms. Algorithm 1 collects and aggregates data to indicate areas for improvement if credit scoring is poor. Algorithm 2 uses reinforcement learning to validate and enhance bank scores. Algorithm 3 focuses on predictive modeling for bank scoring, ensuring that the credit decision-making system is operational and constantly improving. Furthermore, reinforcement learning leverages the features from local interpretable model-agnostic explanations (LIME) and shapely additive explanations (SHAP) to generate locally reliable explanations and attribute the contribution of each feature for determining the output of the model. The Python platform tests the proposed PRL to achieve the objectives. Based on the results, The PRL model markedly enhances credit assessment precision, achieving an accuracy of over 99.5%, which outstrips current methodologies such OCLA (96.12%), PSML (84.12%), and EMPCC (91.67%). Furthermore, the PRL model augments leverage ratios, rising from 2.75% in 2015 to 3.36% in 2024.5, and increases accounts receivable turnover from 4.38% in 2015 to 7.4% in 2024.5, surpassing alternative credit evaluation methodologies. This research highlights the novelty of combining predictive analytics and reinforcement learning to revolutionize credit assessment, providing a scalable and reliable solution for manufacturers and importers. The findings establish the PRL model as a transformative approach for creating risk-tolerant and efficient financial environments.
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