一种基于映射的进化算法约束处理技术及其在投资组合优化问题中的应用

K. Tagawa, Y. Orito
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引用次数: 2

摘要

提出了一种适用于约束优化问题的进化算法约束处理技术。假设约束优化问题的可行域由一个多顶点的凸壳定义。另一方面,在不失一般性的前提下,EA的搜索空间由超立方体给出。所提出的凸壳映射(CHM)将EA搜索空间中的实向量转化为可行域的解。并证明了CHM从EA的搜索空间到可行域的满射映射。虽然所提出的CHM可以应用于任何ea,但本文使用了最新的ea之一,即自适应差分进化(ADE)。利用ADE将CHM与传统的cht在金融领域的一个现实优化问题,即投资组合优化问题中进行比较。投资组合优化是根据一定的目标确定不同资产的最佳投资比例的过程。具体而言,为了揭示CHM随上述顶点数量的变化特征,我们采用了三种不同的组合优化问题公式来评估基于CHM的ADE的绩效。数值实验表明,在大多数情况下,CHM比常规cht效果更好。此外,将CHM与传统CHT相结合的混合方法优于原始CHT。
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A mapping-based constraint-handling technique for evolutionary algorithms with its applications to portfolio optimization problems
A novel Constraint-Handling Technique (CHT) for Evolutionary Algorithms (EAs) applied to constrained optimization problems is proposed. It is assumed that the feasible region of the constrained optimization problem is defined by a convex-hull of multiple vertices. On the other hand, without loss of generality, the search space of EA is given by a hyper-cube. The proposed CHT called Convex-Hull Mapping (CHM) transforms the real vector in the search space of EA into the solution in the feasible region. It is also proven that CHM performs a surjective mapping from the search space of EA to the feasible region. Although the proposed CHM can be applied to any EAs, one of the latest EAs, or Adaptive Differential Evolution (ADE), is used in this paper. By using ADE, CHM is compared with conventional CHTs in a real-world optimization problem in the field of finance, namely the portfolio optimization problem. Portfolio optimization is the process of determining the best proportion of investment in different assets according to some objective. Specifically, to reveal the characteristic of CHM depending on the number of the above vertices, three different formulations of the portfolio optimization problem are employed to evaluate the performance of ADE using CHM. Numerical experiments show that CHM is better than conventional CHTs in most cases. Moreover, the hybrid method combining CHM with a conventional CHT outperforms the original CHT.
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