Title :
Genetic Algorithms for Predicting the Egyptian Stock Market
Author :
Badawy, Fahima A. ; Abdelazim, Hazem Y. ; Darwish, Mohamed G.
Author_Institution :
AMAC Center, Al Ahram Organ.
Abstract :
The purpose of this paper is to discover a semi-optimal set of trading rules and to investigate its effectiveness as applied to Egyptian Stocks. The aim is to mix different categories of technical trading rules and let an automatic evolution process decide which rules are to be used for particular time series. This difficult task can be achieved by using genetic algorithms (GA´s), they permit the creation of artificial experts taking their decisions from an optimal subset of the a given set of trading rules. The GA´s based on the survival of the fittest, do not guarantee a global optimum but they are known to constitute an effective approach in optimizing non-linear functions. Selected liquid stocks are tested and GA trading rules were compared with other conventional and well known technical analysis rules. The Proposed GA system showed clear better average profit and in the same high sharpe ratio, which indicates not only good profitability but also better risk-reward trade-off
Keywords :
economic forecasting; genetic algorithms; stock markets; trade agreements; Egyptian stock market prediction; genetic algorithms; liquid stocks; technical analysis rules; technical trading rules; Algorithm design and analysis; Economic forecasting; Educational institutions; Genetic algorithms; Information analysis; Prediction methods; Profitability; Stock markets; Testing; Genetic Algorithms; Stock Market Prediction; Technical Analysis; Technical Indicators; Technical Trading Strategies;
Conference_Titel :
Information and Communications Technology, 2005. Enabling Technologies for the New Knowledge Society: ITI 3rd International Conference on
Conference_Location :
Cairo
Print_ISBN :
0-7803-9270-1
DOI :
10.1109/ITICT.2005.1609619