Comparative evaluation of fuzzy logic and genetic algorithms models for portfolio optimization

Selection of optimum methods which have appropriate speed and precision for planning and de-cision-making has always been a challenge for investors and managers. One the most important concerns for them is investment planning and optimization for acquisition of desirable wealth under controlled ris...

Full description

Bibliographic Details
Main Authors: Heidar Masoumi Soureh, Gholamreza Farsad Amanollahi
Format: Article
Language:English
Published: Growing Science 2017-03-01
Series:Management Science Letters
Subjects:
Online Access:http://www.growingscience.com/msl/Vol7/msl_2017_4.pdf
Description
Summary:Selection of optimum methods which have appropriate speed and precision for planning and de-cision-making has always been a challenge for investors and managers. One the most important concerns for them is investment planning and optimization for acquisition of desirable wealth under controlled risk with the best return. This paper proposes a model based on Markowitz the-orem by considering the aforementioned limitations in order to help effective decisions-making for portfolio selection. Then, the model is investigated by fuzzy logic and genetic algorithms, for the optimization of the portfolio in selected active companies listed in Tehran Stock Exchange over the period 2012-2016 and the results of the above models are discussed. The results show that the two studied models had functional differences in portfolio optimization, its tools and the possibility of supplementing each other and their selection.
ISSN:1923-9335
1923-9343