AbstractVolatility forecasting in the financial markets, along with the development of financial models, is important in the areas of risk management and asset pricing, among others. Previous testing has shown that asymmetric GARCH models outperform other GARCH family models with regard to volatility prediction. Utilizing this information, three popular Neural Network models (Feed-Forward with Back Propagation, Generalized Regression, and Radial Basis Function) are implemented to help improve the performance of the GJR(1,1) method for estimating volatility over the next forty-four trading days. During training and testing, four different economic cycles have been considered between 1997-2011 to represent real and contemporary periods of mar...
AbstractThe study analyses the family of regime switching GARCH neural network models, which allow t...
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
Within the stock markets, the trading volumes and the asset prices are considered to be highly chang...
AbstractVolatility forecasting in the financial markets, along with the development of financial mod...
Abstract: Financial time series exhibit different stylized facts, namely, asymmetry and nonlinearity...
This study uses the fourteen stock indices as the sample and then utilizes eight parametric volatili...
Extensive research has been done within the field of finance to better predict future volatility and...
Recently, deep neural networks have been widely used to solve financial risk modeling and forecastin...
In this paper, we study the performance of the Artificial Neural Networks (ANNs) and GARCH modelsto ...
AbstractThe objective of this study is to use artificial neural networks for volatility forecasting ...
Portfolio managers, option traders and market makers are all interested in volatility forecasting in...
AbstractThis study compares the forecast performance of volatilities between two types of hybrid ANN...
In the area of financial stock market forecasting, many studies have focused on application of Artif...
Forecast combination models have been broadly studied and often used to improve forecast accuracy. T...
This study compares the forecast performance of volatilities between three models for forecasting st...
AbstractThe study analyses the family of regime switching GARCH neural network models, which allow t...
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
Within the stock markets, the trading volumes and the asset prices are considered to be highly chang...
AbstractVolatility forecasting in the financial markets, along with the development of financial mod...
Abstract: Financial time series exhibit different stylized facts, namely, asymmetry and nonlinearity...
This study uses the fourteen stock indices as the sample and then utilizes eight parametric volatili...
Extensive research has been done within the field of finance to better predict future volatility and...
Recently, deep neural networks have been widely used to solve financial risk modeling and forecastin...
In this paper, we study the performance of the Artificial Neural Networks (ANNs) and GARCH modelsto ...
AbstractThe objective of this study is to use artificial neural networks for volatility forecasting ...
Portfolio managers, option traders and market makers are all interested in volatility forecasting in...
AbstractThis study compares the forecast performance of volatilities between two types of hybrid ANN...
In the area of financial stock market forecasting, many studies have focused on application of Artif...
Forecast combination models have been broadly studied and often used to improve forecast accuracy. T...
This study compares the forecast performance of volatilities between three models for forecasting st...
AbstractThe study analyses the family of regime switching GARCH neural network models, which allow t...
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
Within the stock markets, the trading volumes and the asset prices are considered to be highly chang...