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A comprehensive review of deterministic models and applications for mean-variance portfolio optimization

机译:综合审查均值模型和均值均值的应用程序

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Portfolio optimization is the process of determining the best combination of securities and proportions with the aim of having less risk and obtaining more profit in an investment. Utilizing covariance as a risk measure, mean-variance portfolio optimization model has brought a revolutionary approach to quantitative finance. Since then, along with the advancements in computational power and algorithmic enhancements, a lot of efforts have been made on improving this model by considering real-life conditions and solving model variants with various methodologies tested on various data and performance measures. A comprehensive literature review of recent and novel papers is crucial to establish a pattern of the past, and to pave the way on future directions. In this paper, a total of 175 papers published in the last two decades are selected within the scope of operations research community and reviewed in detail. Thus, a comprehensive survey on the deterministic models and applications suggested for mean-variance portfolio optimization in which several variants of this model as well as additional real-life constraints are studied. The review classifies the approaches according to exact and approximate attempts and analyzes the proposed algorithms based on various data and performance indicators in depth. Areas of future research are outlined. (C) 2019 Elsevier Ltd. All rights reserved.
机译:投资组合优化是确定证券和比例的最佳组合的过程,目的是具有更少的风险并在投资中获得更多利润。利用协方差作为风险措施,平均方差组合优化模型为量化融资带来了一种革命性的方法。从那以后,随着计算能力和算法增强的进步,通过考虑使用在各种数据和性能措施上测试的各种方法来改善该模型来改善该模型,已经提高了很多努力。近期和新文件的全面的文献综述对于建立过去的模式至关重要,并在未来的方向上铺平道路。本文在过去二十年中共有175篇论文被选中在运营研究界的范围内,并详细审查。因此,研究了对平均方差组合优化建议的确定性模型和应用的全面调查,其中研究了该模型的几种变体以及额外的现实寿命约束。审查根据精确和近似尝试对方法进行分类,并根据各种数据和绩效指标进行分析,分析了所提出的算法。概述了未来研究的领域。 (c)2019 Elsevier Ltd.保留所有权利。

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