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Firefly Algorithm for Cardinality Constrained Mean-Variance Portfolio Optimization Problem with Entropy Diversity Constraint

机译:具有熵多样性约束的基数约束均值方差投资组合优化问题的萤火虫算法

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摘要

Portfolio optimization (selection) problem is an important and hard optimization problem that, with the addition of necessary realistic constraints, becomes computationally intractable. Nature-inspired metaheuristics are appropriate for solving such problems; however, literature review shows that there are very few applications of nature-inspired metaheuristics to portfolio optimization problem. This is especially true for swarm intelligence algorithms which represent the newer branch of nature-inspired algorithms. No application of any swarm intelligence metaheuristics to cardinality constrained mean-variance (CCMV) portfolio problem with entropy constraint was found in the literature. This paper introduces modified firefly algorithm (FA) for the CCMV portfolio model with entropy constraint. Firefly algorithm is one of the latest, very successful swarm intelligence algorithm; however, it exhibits some deficiencies when applied to constrained problems. To overcome lack of exploration power during early iterations, we modified the algorithm and tested it on standard portfolio benchmark data sets used in the literature. Our proposed modified firefly algorithm proved to be better than other state-of-the-art algorithms, while introduction of entropy diversity constraint further improved results.
机译:投资组合优化(选择)问题是一个重要而艰巨的优化问题,通过添加必要的现实约束,该问题在计算上变得棘手。受自然启发的元启发法适合解决此类问题;然而,文献综述表明,自然启发式元启发法在投资组合优化问题中的应用很少。群体智能算法尤其如此,它代表了自然启发算法的新分支。在文献中没有发现将任何群智能元启发式方法应用于具有熵约束的基数约束均方差(CCMV)投资组合问题。本文介绍了带有熵约束的CCMV投资组合模型的改进萤火虫算法(FA)。 Firefly算法是最新的,非常成功的群体智能算法之一;但是,将其应用于受约束的问题时会表现出一些缺陷。为了克服早期迭代过程中探索能力的不足,我们修改了算法,并在文献中使用的标准投资组合基准数据集上对其进行了测试。我们提出的改进萤火虫算法被证明比其他现有技术更好,而引入熵分集约束则进一步改善了结果。

著录项

  • 期刊名称 other
  • 作者

    Nebojsa Bacanin; Milan Tuba;

  • 作者单位
  • 年(卷),期 -1(2014),-1
  • 年度 -1
  • 页码 721521
  • 总页数 16
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

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