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Evaluating the Employment of Technical Indicators in Predicting Stock Price Index Variations Using Artificial Neural Networks (Case Study: Tehran Stock Exchange) | Moein Aldin | International Journal of Business and Management

Evaluating the Employment of Technical Indicators in Predicting Stock Price Index Variations Using Artificial Neural Networks (Case Study: Tehran Stock Exchange)

Mahmood Moein Aldin, Hasan Dehghan Dehnavi, Somayye Entezari

Abstract


Stock price index is the initial significant factor influencing on investors' financial decision making. That's why
predicting the exact movements of stock price index is considerably regarded. This study aims at evaluating the
effectiveness of using technical indicators, such as Moving Average, RSI, CCI, MACD, etc in predicting
movements of Tehran Exchange Price Index (TEPIX). An artificial neural network is employed for stock price
index forecasting. The existing data are achieved from Tehran Stock Exchange. To capture the relationship
between the technical indicators and the levels of the index in the market for the period under investigation, a
back propagation neural network is used. The statistical and financial performance of this technique is evaluated
and empirical results revealed that artificial neural networks are dominant tools for financial market predicting.


Full Text: PDF DOI: 10.5539/ijbm.v7n15p25

Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 License.

International Journal of Business and Management   ISSN 1833-3850 (Print)   ISSN 1833-8119 (Online)

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