Predicting Stock Market Trends by Recurrent Deep Neural Networks

Author(s):  
Akira Yoshihara ◽  
Kazuki Fujikawa ◽  
Kazuhiro Seki ◽  
Kuniaki Uehara
Author(s):  
Mohammad Pardaz Banu

The stock market is considered to be one of the most highly complex financial systems which consist of various components or stocks, the price of which fluctuates greatly with respect to time. Stock market forecasting involves uncovering the market trends with respect to time. All the stock market investors aim to maximize the returns over their investments and minimize the risks associated. There are time series methods such as AR, MA, SARIMAX developed to predict the stock price but neural network methods such as CNN, LSTM also used to predict the stock price. This research paper describes the prediction of stock market using neural network alogorithms and also few time series methods.


2019 ◽  
Vol 7 (4) ◽  
pp. 24-28
Author(s):  
Rohit Kumar ◽  
Rohit Gajbhiye ◽  
Isha Nikhar ◽  
Dyotak Thengdi ◽  
Sofia Pillai

Indian Stock market is highly dynamic and especially after globalization stock market modeling has become even more complex due to influence of multiple parameters. In presence of multiple parameters, some parameters have increased influence than others in prediction of stock market trends. This influence of individual parameters and their joint influence over time is better modeled with Convolutional Neural Network Classifiers. This work models the dynamics of stock market in terms of Convolutional Neural Networks and multiple parameters impacting the stock trend. The proposed solution is implemented for Indian stock market for stocks in different sectors to prove its prediction accuracy.


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