投资组合优化问题的目标函数实验研究

Darsha Panwar
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摘要

本文对投资组合优化问题的目标函数进行了实验研究。本研究通过三个具有不同目标数量的优化问题来完成。为此采用了一种混合方法,该方法结合了几种方法,如投资者拓扑、聚类分析、层次分析法(AHP)和优化技术。本文比较了基于教学的优化方法(TLBO)、基于生物地理的优化方法(BBO)和模糊多目标线性规划方法(FMOLP)在投资组合优化中的应用。从本研究中得出结论,目标函数中不应该有更多的选项,否则会误导投资组合的动机,但可以使用更多的参数进行股票估值。
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An Experimental Study with Objectives Functions for Portfolio Optimization Problem
This paper presents an experimental study with the objective’s functions of a portfolio optimization problem. This study is done by three optimization problems with a different number of objectives. A hybrid approach has been adopted for this which is a combination of a few methods, such as investor topology, cluster analysis, analytical hierarchy process (AHP), and optimization techniques. Teaching-learning-based optimization (TLBO), biogeography-based optimization (BBO), and fuzzy multi-objective linear programming (FMOLP) are compared in this paper for portfolio optimization. From this research, the conclusion comes that there should not be more options in the objective functions, otherwise the motive of the portfolio becomes misleading, but many more parameters can be used for stock valuation.
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