Optimization of Investment Portfolio Based on Improved Multi-Objective Genetic Algorithm

Haibin Li
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Abstract

The securities market is characterized by high returns and high risks, and the issue of securities investment portfolio has always been a problem worthy of study. Multi-objective genetic algorithm is widely used in portfolio problems because of its ability to deal with large-scale search space independently of the problem domain, and to solve the problem through loop iterative parallel search. However, the local search performance of the existing multi-objective genetic algorithm is relatively weak, and the cross-mutation process ignores the density information around the individual, which limits the search performance of the algorithm to a certain extent. In order to solve the above problems, this paper proposes an improved multi-objective genetic algorithm investment portfolio scheme. First, the improved Sigmoid function is introduced to realize the adaptive change of the mutation operator, and the population distance between individuals is incorporated into the cross-mutation operation to optimize the search performance of the algorithm. A large number of experiments show that this scheme can be used to solve the Pareto optimal solution set of the portfolio optimization problem, and it has faster convergence than the multi-objective genetic algorithm before the improvement, which can effectively improve the Pareto optimization of the securities investment portfolio. The search performance of the solution set.
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基于改进多目标遗传算法的投资组合优化
证券市场具有高收益、高风险的特点,证券投资组合问题一直是一个值得研究的问题。多目标遗传算法能够独立于问题域处理大规模搜索空间,并通过循环迭代并行搜索解决问题,因此在组合问题中得到了广泛的应用。然而,现有多目标遗传算法的局部搜索性能相对较弱,且交叉突变过程忽略了个体周围的密度信息,在一定程度上限制了算法的搜索性能。为了解决上述问题,本文提出了一种改进的多目标遗传算法投资组合方案。首先,引入改进的Sigmoid函数实现变异算子的自适应变化,并在交叉变异操作中引入个体间的种群距离,优化算法的搜索性能;大量实验表明,该方案可用于求解投资组合优化问题的Pareto最优解集,并且比改进前的多目标遗传算法收敛速度更快,能够有效地改进证券投资组合的Pareto优化。解集的搜索性能。
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