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Multi-obuective evolutionary algorithms for the risk-return trade-off in bank loan management

机译:银行贷款管理中风险收益权衡的多目标进化算法

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Multi-criteria decision-making is an increasingly accepted tool for decision-making in management. In this work, we highlight the application of a novel multi-objective evolutionary algorithm, NSGA-II, to the risk-return trade-off for a bank-loan portfolio manager. The manager of a bank operating in a competitive environment faces the standard goal of maximizing shareholder wealth. Specifically, this attempts to maximize the net worth of the bank, which in turn involves maximizing the net interest margin of the bank (among other factors, such as non-interest income). At the same time, there are significant regulatory constraints placed on the bank, such as the maintenance of adequate capital, interest-rate risk exposure, etc. The genetic algorithm-based technique used here obtains an approximation to the set of Pareto-optimal solutions which increases the decision flexibility available to the bank manager, and provides a visualization tool for one of the trade-offs involved. The algorithm is also computationally efficient and is contrasted with a traditional multi-objective function-the epsilon-constraint method.
机译:多准则决策是管理中决策的一种越来越被接受的工具。在这项工作中,我们重点介绍了一种新颖的多目标进化算法NSGA-II在银行贷款投资组合经理的风险收益权衡中的应用。在竞争激烈的环境中运营的银行的经理面临着实现股东财富最大化的标准目标。具体而言,这试图使银行的净资产最大化,这反过来又涉及使银行的净利息收益率最大化(在其他因素中,例如非利息收入)。同时,银行存在重大的监管约束,例如维持足够的资本,利率风险敞口等。这里使用的基于遗传算法的技术可以近似求解帕累托最优解集。这增加了银行经理可用的决策灵活性,并为涉及的权衡之一提供了可视化工具。该算法在计算上也很有效,并且与传统的多目标函数(ε约束方法)形成对比。

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