Portfolio investment based on probabilistic multi-objective optimization and uniform design for experiments with mixtures

M. Zheng, Jie Yu
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Abstract

Introduction/purpose: In this paper, a new approach to solving the portfolio investment problem is formulated to handle simultaneous optimization of both maximizing the rate of return and minimizing the variance of the rate of return. Probability - based multi - objective optimization is combined with uniform design for experiments with mixtures to conduct processing. Methods: Preliminarily, probability - based multi - objective optimization is employed to synthesize the bi-objective problem of simultaneous optimization of both maximizing the rate of return and minimizing the variance of the rate of return into a single objective one of the total preferable probability of each alternative scenario. The total preferable probability is the product of all partial preferable probabilities of each performance utility; subsequently, the method of uniform design for experiments with mixtures is used to create a set of effective sampling points for the portfolio investment problem to provide discretization in data processing and simplifying treatment, of which the proportion xi follows the constraint condition of xl + x2 + x3...+ xs = 1 with the total number of variables s for xi. Results: The new approach is used to deal with the portfolio Investment problem that is, in essence, simultaneous optimization of both maximizing the rate of return and minimizing the variance of the rate of return, which leads to reasonable consequences. The results are with the quality of rationality from the respect of the probability theory for simultaneous optimization of multiple objectives. Conclusion: This method naturally reflects the essence of the portfolio investment problem and opens a new way of solving the relevant problem.
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基于概率多目标优化和混合实验均匀设计的组合投资
前言/目的:本文提出了一种解决组合投资问题的新方法,以解决收益率最大化和收益率方差最小化的同时优化问题。将基于概率的多目标优化与混合实验的均匀设计相结合进行处理。方法:初步采用基于概率的多目标优化方法,将收益率最大化和收益率方差最小化同时优化的双目标问题综合为各备选方案总优选概率的单目标优化问题。总优选概率是各性能效用的所有部分优选概率的乘积;随后,采用混合实验均匀设计的方法,为组合投资问题建立有效采样点集合,在数据处理上提供离散化和简化处理,其中比例xi遵循xl + x2 + x3的约束条件。+ xs = 1,变量总数s表示xi。结果:该方法用于解决组合投资问题,本质上是收益率最大化和收益率方差最小化的同时优化问题,从而得到合理的结果。从多目标同时优化的概率论角度出发,所得结果具有一定的合理性。结论:该方法自然地反映了证券投资问题的本质,为解决相关问题开辟了一条新的途径。
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发文量
24
审稿时长
12 weeks
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