Portfolio management assessment by four multiobjective optimization algorithm

S. Mishra, G. Panda, S. Meher, R. Majhi, M. Singh
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引用次数: 13

Abstract

The portfolio optimization aims to find an optimal set of assets to invest on, as well as the optimal investment for each asset. This optimal selection and weighting of assets is a multi-objective problem where total profit of investment has to be maximized and total risk is to be minimized. In this paper four well known multi-objective evolutionary algorithms i.e. Pareto Archived Evolution Strategy (PAES), Pareto Envelope-based Selection Algorithm (PESA), Adaptive Pareto Archived Evolution Strategy (APAES) algorithm and Non dominated Sorting Genetic Algorithm II (NSGA II) are chosen and successfully applied for solving the biobjective portfolio optimization problem. Their performances have been evaluated through simulation study and have been compared in terms of Pareto fronts, the delta, C and S metrics. Simulation results of various portfolios clearly demonstrate the superior portfolio management capability of NSGA II based method compared to other three standard methods. Finally NSGA II algorithm is applied to the same problem with some real world constraint.
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投资组合管理评估采用四种多目标优化算法
投资组合优化的目的是找到一组最优的资产进行投资,以及每项资产的最优投资。资产的最优选择和加权是一个投资总利润最大化和总风险最小化的多目标问题。本文选取了Pareto存档进化策略(PAES)、Pareto包膜选择算法(PESA)、自适应Pareto存档进化策略(APAES)算法和非支配排序遗传算法II (NSGA II)四种著名的多目标进化算法,并将其成功地应用于解决双目标投资组合优化问题。通过模拟研究评估了它们的性能,并根据帕累托前沿、delta、C和S指标进行了比较。各种投资组合的仿真结果清楚地表明,基于NSGA II的方法相对于其他三种标准方法具有更强的投资组合管理能力。最后,将NSGA II算法应用于具有实际约束的相同问题。
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