Author:
Mousazadeh Abbassi Noraddin,Ali Aghaei Mohammad,Moradzadeh Fard Mahdi
Abstract
Purpose
– The aim of this research is to predict the total stock market index of the Tehran Stock Exchange, using the compound method of fuzzy genetics and neural network, in order for the active participants of the finance market as well as macro decision makers to be able to predict the market trend.
Design/methodology/approach
– First, the prediction was done by neural network, then the output weight of optimum neural network was taken as standard to repeat this prediction using the genetic algorithm, and then the extracted pattern from the neural network was stated through discernible rules using fuzzy theory.
Findings
– The main attention of this paper is investors and traders to achieve a method for predicting the stock market. Concerning the results of previous research, which confirms the relative superiority of non-linear models in price index prediction, an appropriate model has been offered in this research by compounding the non-linear method such as fuzzy genetics and neural network. The results indicate superiority of the designed system in predicting price index of the Tehran Stock Exchange.
Originality/value
– This paper states its originality and value by compounding the non-linear method issues pattern to predict stock market, to encourage further investigation by academics and practitioners in the field.
Subject
Strategy and Management,General Business, Management and Accounting
Reference25 articles.
1. Adam, A.M.
and
Tweneboah, G.
(2008), “Macroeconomic factors and stock market movement: evidence from Ghana”, paper presented at Munich Personal RePEc Archive.
2. Anderson, J.A.
(1996), “Neural models with cognitive implications”, Basic Processes in Reading Perception and Comprehension Models, Erlbaum, Hillsdale, NJ, pp. 27-90.
3. Chang, P.C.
and
Liu, C.H.
(2008), “A TSK type fuzzy rule based system for stock price prediction”, Expert Systems with Applications, Vol. 34, pp. 135-144.
4. Chen, T.L.
,
Cheng, C.H.
and
Jong Teoh, H.
(2007), “Fuzzy time-series based on Fibonacci sequence for stock price forecasting”, Physica A, Vol. 380, pp. 377-390.
5. Chen, T.L.
,
Cheng, C.H.
and
Jong Teoh, H.
(2008), “High-order fuzzy timeseries based on multi-period adaptation model for forecasting stock markets”, Physica A, Vol. 387, pp. 876-888.
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