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首页> 外文期刊>International Journal of Fuzzy Systems >A Hybrid Multiobjective Bat Algorithm for Fuzzy Portfolio Optimization with Real-World Constraints
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A Hybrid Multiobjective Bat Algorithm for Fuzzy Portfolio Optimization with Real-World Constraints

机译:具有实际约束的模糊投资组合优化的混合多目标蝙蝠算法

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摘要

This paper investigates a fuzzy portfolio selection problem in the framework of multiobjective optimization. A multiobjective mean-semivariance-entropy model with fuzzy returns is proposed for portfolio selection. Specifically, it simultaneously optimizes the return, risk and portfolio diversification, taking into account transaction costs, liquidity, buy-in thresholds, and cardinality constraints. Since this kind of mixed-integer nonlinear programming problems cannot be efficiently solved by the conventional optimization approaches, a new metaheuristic method termed as the hybrid BA-DE is developed by combining features of the bat algorithm (BA) and differential evolution (DE). In order to demonstrate the effectiveness of the proposed approaches, we also provide a numerical example.
机译:本文研究了多目标优化框架下的模糊证券投资组合选择问题。提出了一种具有模糊收益的多目标均值-半方差-熵模型来进行投资组合选择。具体而言,它同时考虑交易成本,流动性,买入门槛和基数约束,同时优化收益,风险和投资组合的多元化。由于传统的优化方法无法有效地解决这种混合整数非线性规划问题,因此,结合蝙蝠算法(BA)和差分进化(DE)的特征,开发了一种称为混合BA-DE的新启发式方法。为了证明所提出方法的有效性,我们还提供了一个数值示例。

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