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首页> 外文期刊>International journal of computational vision and robotics >Multi-objective evolutionary algorithms for financial portfolio design
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Multi-objective evolutionary algorithms for financial portfolio design

机译:金融投资组合设计的多目标进化算法

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摘要

Efficient portfolio design is a real challenge in the area of computational finance. Optimisation based on Markowitz (1959) two-objective mean-variance approach is computationally expensive for real financial world. Practical portfolio design introduces further complexity as it requires the optimisation of multiple return and risk measures. Some of these measures are non-linear and non-convex. Three well known multi-objective evolutionary algorithms, i.e., Pareto envelope-based selection algorithm, micro-genetic algorithm and multi-objective particle swarm optimisation are chosen and applied for solving the bi-objective portfolio optimisation problem which simultaneously maximise the return and minimise the associated risk. Performance comparison is obtained by carrying out using practical data. The results demonstrate that MOPSO outperforms the existing two methods for the considered test cases.
机译:高效的投资组合设计是计算金融领域的真正挑战。基于Markowitz(1959)两目标均方差方法的优化对于现实的金融世界在计算上是昂贵的。实际的投资组合设计会进一步增加复杂性,因为它需要优化多种回报和风险衡量。其中一些度量是非线性和非凸的。选择了三种公知的多目标进化算法,即基于帕累托包络的选择算法,微遗传算法和多目标粒子群优化算法,并将其用于解决双目标资产组合优化问题,该问题同时使收益最大化而使收益最小化。相关风险。通过使用实际数据进行性能比较。结果表明,对于所考虑的测试用例,MOPSO优于现有的两种方法。

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