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Constrained portfolio asset selection using multiobjective bacteria foraging optimization

机译:使用多目标细菌觅食优化的受限投资组合资产选择

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摘要

Portfolio asset selection (PAS) is a challenging and interesting multiobjective task in the field of computational finance, and is receiving the increasing attention of researchers, fund management companies and individual investors in the last few decades. Selecting a subset of assets and corresponding optimal weights from a set of available assets, is a key issue in the PAS problem. A Markowitz model is generally used to solve this optimization problem, where the total profit is maximized, while the total risk is to be minimized. However, this model does not consider the practical constraints, such as the minimum buy in threshold, maximum limit, cardinality etc. The Practical constraints are incorporated in this study to meet a real world financial scenario. In the proposed work, the PAS problem is formulated in a multiobjective framework, and solved using the multiobjective bacteria foraging optimization (MOBFO) algorithm. The performance of the proposed approach is compared with a set of competitive multiobjective evolutionary algorithms using six performance metrics, the Pareto front and computational time. On examining the performance metrics, it is concluded that the proposed MOBFO algorithm is capable of identifying a good Pareto solution, maintaining adequate diversity. The proposed algorithm is also successfully applied to different cardinality constraint conditions, for six different market indices.
机译:投资组合资产选择(PAS)在计算金融领域是一项具有挑战性和有趣的多目标任务,并且在过去的几十年中越来越受到研究人员,基金管理公司和个人投资者的关注。从一组可用资产中选择资产的子集和相应的最佳权重是PAS问题中的关键问题。通常使用Markowitz模型来解决此优化问题,该模型中的总利润最大化,而总风险最小。但是,该模型未考虑实际约束,例如最低买入门槛,最大限额,基数等。实际约束已纳入本研究中,以满足现实世界中的财务状况。在提出的工作中,PAS问题是在多目标框架中提出的,并使用多目标细菌觅食优化(MOBFO)算法解决。所提出的方法的性能与一组竞争性多目标进化算法进行了比较,该算法使用六个性能指标(帕累托前沿和计算时间)。通过检查性能指标,可以得出结论,提出的MOBFO算法能够识别良好的Pareto解决方案,并保持足够的多样性。对于六个不同的市场指数,该算法也成功地应用于不同的基数约束条件。

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