An Algorithmic Trading system Based on Machine Learning in Tehran Stock Exchange
Subject Areas : Financial MathematicsHamidreza Haddadian 1 , Morteza Baky Haskuee 2 , Gholamreza Zomorodian 3
1 - Department of Financial Management, Management Faculty, Central Branch, Islamic Azad university, Tehran, iran
2 - Department of Economics, Imam Sadiq University, Tehran, Iran
3 - Department of Business Management, Central Tehran Branch, Islamic Azad University, Tehran,
Iran
Keywords:
Abstract :
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