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Bacterial Foraging Optimization Based on Levy Flight for Fuzzy Portfolio Optimization

机译:基于征费飞行的细菌觅食优化模糊组合优化

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In this paper, a new kind of bacterial foraging optimization that combines with levy flight (LBFO) is employed to solve a novel portfolio optimization (PO) problem with fuzzy variables and modified mean-semivariance model which includes the transaction fee (including the purchase fee and sell fee), no short sales and the original proportion of the different assets. First of all, a chemotaxis step size using levy distribution takes the place of fixed chemotaxis step size, which makes a good balance between local search and global search through frequent short-distance search and occasional long-distance search. Moreover, fuzzy variables are used to signify the uncertainty of future risks and returns on assets and some constrained conditions are taken into consideration. The results of the simulation show that the model can be solved more reasonably and effectively by LBFO algorithm than the original bacterial foraging optimization (BFO).
机译:本文中,采用了一种与征收飞行(LBFO)结合的新型细菌觅食优化来解决模糊变量的新产品组合优化(PO)问题,并修改了包括交易费(包括采购费用)的模糊均值模型并卖出费用),销售额不足和原始比例的不同资产。首先,使用征收分布的趋化性步长取代了固定的趋化性步长,在频繁的短程搜索和偶尔的长距离搜索之间会在本地搜索和全球搜索之间进行良好的平衡。此外,模糊变量用于表示未来风险的不确定性,并考虑有关资产的回报和一些约束条件。仿真结果表明,通过LBFO算法比原始细菌觅食优化(BFO)更合理且有效地解决该模型。

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