Title of article :
An Algorithmic Trading System Based On Machine Learning in Tehran Stock Exchange
Author/Authors :
Haddadian, Hamidreza Financial Management Department - Central Tehran Branch - Islamic Azad university - Tehran, Iran , Baky Haskuee, Morteza Economics Department - Imam Sadiq University - Tehran, Iran , Zomorodian, Gholamreza Business Management Department - Central Tehran Branch - Islamic Azad University - Tehran, Iran
Abstract :
Successful trades in financial markets have to be conducted close to the key recurrent
points. Researchers have recently developed diverse systems to help the
identification of these points. Technical analysis is one of the most valid and allpurpose
kinds of these systems. With its numerous rules, the technical analysis
endeavours to create well-timed and correct signals so that these points are identified.
However, one of the drawbacks of this system is its overdependence on
human analysis and knowledge in selecting and applying these rules. Employing
the three tools of genetic algorithm, fuzzy logic, and neural network, this study
attempts to develop an intelligent trading system based on the recognized rules of
the technical analysis. Indeed, the genetic algorithm will assist with the optimization
of technical rules owing to computing complexities. The fuzzy inference
will also help the recognition of the total current condition in the market. It is
because a set of rules will be selected based on the market kind (trending or nontrending).
Finally, the signal developed by every rule will be translated into a
single result (buy, sell, or hold). The obtained results reveal that there is a statistically
meaningful difference between a stock's buy and hold and the trading system
proposed by this research. In other words, our proposed system displays an
extremely higher profitability potential.
Keywords :
Stock Trading System , Genetic Algorithm , Technical Analysis , Neural Network , Fuzzy Logic
Journal title :
Advances in Mathematical Finance and Applications