Portfolio Optimization and Asset Allocation With Metaheuristics

J. Ray, S. Bhattacharyya, N. B. Singh
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引用次数: 1

Abstract

Portfolio optimization stands to be an issue of finding an optimal allocation of wealth to place within the obtainable assets. Markowitz stated the problem to be structured as dual-objective mean-risk optimization, pointing the best trade-off solutions within a portfolio between risks which is measured by variance and mean. Thus the major intention was nothing else than hunting for optimum distribution of wealth over a specific amount of assets by diminishing risk and maximizing returns of a portfolio. Value-at-risk, expected shortfall, and semi-variance measures prove to be complex for measuring risk, for maximization of skewness, liquidity, dividends by added objective functions, cardinality constraints, quantity constraints, minimum transaction lots, class constraints in real-world constraints all of which are incorporated in modern portfolio selection models, furnish numerous optimization challenges. The emerging portfolio optimization issue turns out to be extremely tough to be handled with exact approaches because it exhibits nonlinearities, discontinuities and high-dimensional, efficient boundaries. Because of these attributes, a number of researchers got motivated in researching the usage of metaheuristics, which stand to be effective measures for finding near optimal solutions for tough optimization issues in an adequate computational time frame. This review report serves as a short note on portfolio optimization field with the usage of Metaheuristics and finally states that how multi-objective metaheuristics prove to be efficient in dealing with portfolio selection problems with complex measures of risk defining non-convex, non-differential objective functions.
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基于元启发式的投资组合优化与资产配置
投资组合优化是在可获得的资产中找到财富的最佳配置的问题。Markowitz将问题结构化为双目标平均风险优化,指出投资组合中由方差和均值度量的风险之间的最佳权衡解决方案。因此,主要的意图无非是通过降低风险和最大化投资组合的回报,在特定数量的资产上寻找财富的最佳分配。风险价值、预期不足和半方差度量对于衡量风险、偏度最大化、流动性、通过添加目标函数实现的股息、基数约束、数量约束、最小交易批次、现实世界约束中的类别约束都证明是复杂的,所有这些都被纳入现代投资组合选择模型,提供了许多优化挑战。新兴的投资组合优化问题很难用精确的方法来处理,因为它表现出非线性、不连续和高维、高效的边界。由于这些属性,许多研究人员开始研究元启发式的使用,元启发式是在足够的计算时间框架内为困难的优化问题找到接近最优解的有效方法。本文简要介绍了元启发式方法在投资组合优化领域的应用,最后阐述了多目标元启发式方法如何有效地处理具有复杂风险度量的投资组合选择问题,并定义了非凸、非微分目标函数。
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