不确定情景下资产负债可靠管理的一种近似启发式算法

C. Bayliss, Marti Serra, Mariem Gandouz, A. Juan, Armando Nieto
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引用次数: 0

摘要

对保险公司和银行来说,资产负债的管理是至关重要的。需要就如何将资产分配给负债做出复杂的决策,以便在一段时间内使总体效益最大化。此外,在任何特定时间无法支付债务的风险必须保持在一定的阈值水平之下。这种优化挑战在文献中被称为资产和负债管理(ALM)问题。在这项工作中,我们提出了一种偏随机(BR)算法来解决ALM问题的确定性版本。首先,我们概述了一个贪婪启发式算法。其次,我们利用偏态概率分布将其转化为BR算法。然后,通过结合蒙特卡罗模拟,将BR算法扩展为一种近似启发式算法来处理随机版本的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Simheuristic Algorithm for Reliable Asset and Liability Management Under Uncertainty Scenarios
The management of assets and liabilities is of critical importance for insurance companies and banks. Complex decisions need to be made regarding how to assign assets to liabilities in such a way that the overall benefit is maximised over a time horizon. In addition, the risk of not being able to cover the liabilities at any given time must be kept under a certain threshold level. This optimisation challenge is known in the literature as the asset and liability management (ALM) problem. In this work, we propose a biased-randomized (BR) algorithm to solve a deterministic version of the ALM problem. Firstly, we outline a greedy heuristic. Secondly, we transform it into a BR algorithm by employing skewed probability distributions. The BR algorithm is then extended into a simheuristic by incorporating Monte-Carlo simulation to deal with the stochastic version of the problem.
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