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A multi-objective evolutionary algorithm for a class of mean-variance portfolio selection problems

机译:一类平均方差组合选择问题的多目标进化算法

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摘要

The portfolio selection problem (PSP) concerns the resource allocation to a finite number of assets. In its classic approach, the problem aims at overcoming a trade-off between the risk and expected return of the portfolio. In recent years, additional constraints identified in financial markets have been incorporated into the literature, as an attempt to close the gap between theory and practice. In view of this, this paper introduces a unified multi-objective particle swarm optimization approach capable of solving a class of mean-variance PSPs. An adaptive ranking procedure is also developed, which is based on three mechanisms, including a new one. Extensive computational experiments were carried out in five PSP variants and the results obtained were compared with those found by problem-specific methods from the literature. The proposed approach was capable of finding highly competitive results in all problems and in most of the multi-objective metrics considered. (C) 2019 Elsevier Ltd. All rights reserved.
机译:投资组合选择问题(PSP)涉及有限数量资产的资源分配。在经典的方法中,该问题旨在克服投资组合的风险和预期回报之间的权衡。近年来,金融市场中确定的额外限制已纳入文献中,以缩短理论与实践之间的差距。鉴于此,本文介绍了一种能够解决一类平均方差PSP的统一多目标粒子群优化方法。还开发了自适应排名程序,基于三个机制,包括新的机制。在五个PSP变体中进行了广泛的计算实验,并将得到的结果与来自文献中的特定问题方法发现的结果进行了比较。拟议的方法能够在所有问题中找到高度竞争的结果,并且在大多数多目标度量标准中考虑过。 (c)2019 Elsevier Ltd.保留所有权利。

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