基于遗传关系算法的投资组合选择策略

Yan Chen, S. Mabu, K. Hirasawa
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引用次数: 1

摘要

本文提出了一种新的组合选择策略β-GRA,该策略在遗传关系算法(GRA)中以收益和风险作为强度度量。由于投资组合β β有效地衡量了相对于基准指数或资本市场的波动性,因此β通常用于投资组合的评估或预测,但很少用于投资组合的构建过程。本文的主要目的是提出一种基于β的综合组合选择策略,该策略使用GRA进行股票选择。GRA是一种新的进化算法,由于其特殊的结构而被设计用于解决优化问题。我们通过实验说明了所提出的策略,并将结果与传统模型的结果进行了比较。
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A portfolio selection strategy using Genetic Relation Algorithm
This paper proposes a new strategy β-GRA for portfolio selection in which the return and risk are considered as measures of strength in Genetic Relation Algorithm (GRA). Since the portfolio beta β efficiently measures the volatility relative to the benchmark index or the capital market, β is usually employed for portfolio evaluation or prediction, but scarcely for portfolio construction process. The main objective of this paper is to propose an integrated portfolio selection strategy, which selects stocks based on β using GRA. GRA is a new evolutionary algorithm designed to solve the optimization problem due to its special structure. We illustrate the proposed strategy by experiments and compare the results with those derived from the traditional models.
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