This study, proposes a novel neural network and fuzzy-neural network approach for predicting the closing index of the stock market. It strives to adapt the number of hidden neurons of a Multi Layer Feed Forward Neural Network (MLFFNN) and Fuzzy Time Series Multi Layer Feed Forward Neural Network (FTS-MLFFNN) model. It uses the Tracking Signal (TS) and rejects all models which result in values outside the interval of [-4, +4]. The effectiveness of the proposed approach is verified with one step ahead of Bombay Stock Exchange (BSE100) closing stock index of Indian stock market. This novel approach reduces the over-fitting problem, reduces the neural network structure and improves prediction accuracy. In addition, the result of MLFFNN with TS ...
Abstract: This paper proposes financial time-series forecasting using a feature selection method bas...
Indian Stock market is highly dynamic and especially after globalization stock market modeling has b...
The aim of this paper is to develop new neural network algorithms to predict trading signals: buy, h...
Stock trading can be generally divided into two types – fundamental analysis and technical analysis....
The financial industry has been becoming more and more dependent on advanced computing technologies ...
This study proposed a novel Nonlinear Auto Regressive eXogenous Neural Network (NARXNN) with Trackin...
The financial industry has been becoming more and more dependent on advanced computing technologies ...
Analysis and prediction of stock market is very interesting as this helps the financial experts in d...
In this paper, the prediction of future stock close price of SENSEX & NSE stock exchange is foun...
Abstract. Knowing about future values and trend of stock market has attracted a lot of attention by ...
This paper aims to predict stock prices using open, high, low, close variables using artificial neur...
Stock markets around the world are affected by many highly correlated economic, political and eve...
Artificial neural networks are extensively used to predict the financial time series. This study imp...
Artificial neural networks are highly flexible function approximates and have proved to be a very po...
This paper surveys recent literature in the area of Neural Network, Data Mining, Hidden Markov Model...
Abstract: This paper proposes financial time-series forecasting using a feature selection method bas...
Indian Stock market is highly dynamic and especially after globalization stock market modeling has b...
The aim of this paper is to develop new neural network algorithms to predict trading signals: buy, h...
Stock trading can be generally divided into two types – fundamental analysis and technical analysis....
The financial industry has been becoming more and more dependent on advanced computing technologies ...
This study proposed a novel Nonlinear Auto Regressive eXogenous Neural Network (NARXNN) with Trackin...
The financial industry has been becoming more and more dependent on advanced computing technologies ...
Analysis and prediction of stock market is very interesting as this helps the financial experts in d...
In this paper, the prediction of future stock close price of SENSEX & NSE stock exchange is foun...
Abstract. Knowing about future values and trend of stock market has attracted a lot of attention by ...
This paper aims to predict stock prices using open, high, low, close variables using artificial neur...
Stock markets around the world are affected by many highly correlated economic, political and eve...
Artificial neural networks are extensively used to predict the financial time series. This study imp...
Artificial neural networks are highly flexible function approximates and have proved to be a very po...
This paper surveys recent literature in the area of Neural Network, Data Mining, Hidden Markov Model...
Abstract: This paper proposes financial time-series forecasting using a feature selection method bas...
Indian Stock market is highly dynamic and especially after globalization stock market modeling has b...
The aim of this paper is to develop new neural network algorithms to predict trading signals: buy, h...