DocumentCode
505172
Title
A genetic relation algorithm with guided mutation for the large-scale portfolio optimization
Author
Chen, Yan ; Yue, Chuan ; Mabu, Shingo ; Hirasawa, Kotaro
Author_Institution
Grad. Sch. of Inf., Waseda Univ., Fukuoka, Japan
fYear
2009
fDate
18-21 Aug. 2009
Firstpage
2579
Lastpage
2584
Abstract
The survey of the relevant literature showed that there have been many studies for portfolio optimization problem and that the number of studies which have investigated the optimum portfolio using evolutionary computation is quite high. But almost none of these studies deals with genetic relation algorithm (GRA). This study presents an approach to large-scale portfolio optimization problem using GRA with a new operator, called guided mutation. In order to pick up the most efficient portfolio, GRA considers the correlation coefficient between stock brands as strength, which indicates the relation between nodes in each individual of GRA. Guided mutation generates offspring according to the average value of correlation coefficients in each individual. A genetic relation algorithm with guided mutation (GRA/G) for the portfolio optimization is proposed in this paper. Genetic network programming (GNP), which was proposed in our previous research, is used to validate the performance of the portfolio generated with GRA/G. The results show that GRA/G approach is successful in portfolio optimization.
Keywords
genetic algorithms; stock markets; evolutionary computation; genetic network programming; genetic relation algorithm; guided mutation; large scale portfolio optimization; stock brands correlation coefficient; Economic indicators; Evolutionary computation; Genetic mutations; Large-scale systems; Portfolios; Production systems; Genetic Network Programming; Genetic Relation Algorithm; Guided Mutation; Portfolio Optimization;
fLanguage
English
Publisher
ieee
Conference_Titel
ICCAS-SICE, 2009
Conference_Location
Fukuoka
Print_ISBN
978-4-907764-34-0
Electronic_ISBN
978-4-907764-33-3
Type
conf
Filename
5335350
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