During the recent decades, neural network models have been focused upon by researchers due to their more real performance and on this basis different types of these models have been used in forecasting. Now, there is this question that which kind of these models has more explanatory power in forecasting the future processes of the stock. In line with this, the present paper made a comparison between static and dynamic neural network models in forecasting the return of Tehran Stock Exchange (TSE) index in order to find the best model to be used for forecasting this series (as a nonlinear financial time series). The data were collected daily from 25/3/2009 to 22/10/2011. The models examined in this study included two static models (Adaptive N...
Neural networks (NN) have been widely touted as solving many forecasting and decision modeling probl...
This paper presents an application of neural networks to financial time-series forecasting. No addit...
Application of neural network architectures for financial prediction has been actively studied in re...
During the recent decades, neural network models have been focused upon by researchers due to their ...
Artificial neural networks (ANNs) can be a potential tool for non-linear processes that have unknown...
The main purpose of the present study was to investigate the capabilities of two generations of mode...
The design of models for time series forecasting has found a solid foundation on statistics and math...
This study shows that neural networks have been advocated as an alternative to traditional statistic...
In this paper, we examine the use of the artificial neural network method as a forecasting technique...
Neural networks demonstrate great potential for discovering non-linear relationships in time-series ...
This study proposes a nonlinear generalisation of factor models based on artificial neural networks ...
This thesis evaluates the utility of Artificial Neural Networks (ANNs) applied to financial market a...
Considering the fact that markets are generally influenced by different external factors, the stock ...
Stock trading can be generally divided into two types – fundamental analysis and technical analysis....
AbstractIn this paper, authors present a new approach in forecasting economic time series - applicat...
Neural networks (NN) have been widely touted as solving many forecasting and decision modeling probl...
This paper presents an application of neural networks to financial time-series forecasting. No addit...
Application of neural network architectures for financial prediction has been actively studied in re...
During the recent decades, neural network models have been focused upon by researchers due to their ...
Artificial neural networks (ANNs) can be a potential tool for non-linear processes that have unknown...
The main purpose of the present study was to investigate the capabilities of two generations of mode...
The design of models for time series forecasting has found a solid foundation on statistics and math...
This study shows that neural networks have been advocated as an alternative to traditional statistic...
In this paper, we examine the use of the artificial neural network method as a forecasting technique...
Neural networks demonstrate great potential for discovering non-linear relationships in time-series ...
This study proposes a nonlinear generalisation of factor models based on artificial neural networks ...
This thesis evaluates the utility of Artificial Neural Networks (ANNs) applied to financial market a...
Considering the fact that markets are generally influenced by different external factors, the stock ...
Stock trading can be generally divided into two types – fundamental analysis and technical analysis....
AbstractIn this paper, authors present a new approach in forecasting economic time series - applicat...
Neural networks (NN) have been widely touted as solving many forecasting and decision modeling probl...
This paper presents an application of neural networks to financial time-series forecasting. No addit...
Application of neural network architectures for financial prediction has been actively studied in re...