基于遗传算法的贷款组合优化:一个信贷约束的案例

N. Metawa, M. Elhoseny, M. Kabir Hassan, A. Hassanien
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引用次数: 46

摘要

随着资本监管对银行财务决策的影响越来越大,特别是在信贷约束的竞争环境下,迫切需要建立一个最优的银行贷款决策机制,使银行利润及时最大化。在此背景下,我们提出了一种利用遗传算法动态组织银行贷款决策的自组织方法。我们提出的基于遗传算法的模型提供了一个框架来优化银行在构建贷款组合时的目标,在寻找最优的、动态的贷款决策时,使银行利润最大化,银行违约概率最小化。将与贷款特征、债权人评级相关的多个因素整合到遗传染色体中,并进行验证以确保最优决策。遗传算法使用随机搜索来建议最合适的设计。为了获得最有效的贷款决策,我们使用该算法。选择遗传算法的原因是其在解决信用评估、投资组合优化和银行贷款决策等多目标优化问题时的收敛性和灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Loan portfolio optimization using Genetic Algorithm: A case of credit constraints
With the increasing impact of capital regulation on banks financial decisions especially in competing environment with credit constraints, it comes the urge to set an optimal mechanism of bank lending decisions that will maximize the bank profit in a timely manner. In this context, we propose a self-organizing method for dynamically organizing bank lending decision using Genetic Algorithm (GA). Our proposed GA based model provides a framework to optimize bank objective when constructing the loan portfolio, which maximize the bank profit and minimize the probability of bank default in a search for an optimal, dynamic lending decision. Multiple factors related to loan characteristics, creditor ratings are integrated to GA chromosomes and validation is performed to ensure the optimal decision. GA uses random search to suggest the best appropriate design. We use this algorithm in order to obtain the most efficient lending decision. The reason for choosing GA is its convergence and its flexibility in solving multi-objective optimization problems such as credit assessment, portfolio optimization and bank lending decision.
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