Providing a smart trading system based on the combination of technical analysis indicators, meta-heuristic algorithms and neural network in Tehran Stock Exchange
The main goal of investing in the stock market is to get the highest return at the desired time. Successful trading in financial markets should be done close to key reversal points.In this research, we are trying to select the widely used technical rules by studying the previous researches and improving the decision parameters in the mentioned technical rules for each stock by using the firefly and gray wolf algorithm and converting contradictory signals issued from the optimized indicators to the unit. And finally, through the LSTM neural network, we will try to predict the entry and exit positions of the stock market.This research was conducted from 1390 to September 1401 on Tehran Stock Exchange companies. The proposed model has been able to correctly identify buy, sell and hold points for a future trading day for long-term investors with an error of about thirty-six percent.Keywords: Technical indicators, firefly algorithm, GWO and LSTM
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Analysis of Dynamic Relations Amongst Oil and Gold Prices and TEPIX in Iran’s Economy Using SVAR-Asymmetric-BEKK-GARCH modle
Tara Heidari Chavari, Mirfaiz Fallah Shams *, Hashem Nikoomaram, Fraydoon Rahnamay Roodposhti, Gholamreza Zomorodian
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