Portfolio managers, option traders and market makers are all interested in volatility forecasting in order to get higher profits or less risky positions. Based on the fact that volatility is time varying in high frequency data and that periods of high volatility tend to cluster, the most popular models in modelling volatility are GARCH type models because they can account excess kurtosis and asymmetric effects of financial time series. A standard GARCH(1,1) model usually indicates high persistence in the conditional variance, which may originate from structural changes. The first objective of this paper is to develop a parsimonious neural networks (NN) model, which can capture the nonlinear relationship between past return innovations and c...
In recent years, support vector regression (SVR), a novel neural network (NN) technique, has been su...
The objective of this study is to use artificial neural networks for volatility forecasting to enhan...
In the last few decades, a broad strand of literature in finance has implemented artificial neural ...
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
AbstractVolatility forecasting in the financial markets, along with the development of financial mod...
This study uses the fourteen stock indices as the sample and then utilizes eight parametric volatili...
This study compares the forecast performance of volatilities between three models for forecasting st...
The ability to obtain accurate volatility forecasts is an important issue for the financial analyst....
In the area of financial stock market forecasting, many studies have focused on application of Artif...
Abstract: Financial time series exhibit different stylized facts, namely, asymmetry and nonlinearity...
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 ...
It is well known that one of the obstacles to effective forecasting of exchange rates is heterosceda...
Creative Commons: Reconocimiento 3.0 España (CC BY 3.0 ES)Econometric models have usually estimated ...
AbstractThe objective of this study is to use artificial neural networks for volatility forecasting ...
In recent years, support vector regression (SVR), a novel neural network (NN) technique, has been su...
The objective of this study is to use artificial neural networks for volatility forecasting to enhan...
In the last few decades, a broad strand of literature in finance has implemented artificial neural ...
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
AbstractVolatility forecasting in the financial markets, along with the development of financial mod...
This study uses the fourteen stock indices as the sample and then utilizes eight parametric volatili...
This study compares the forecast performance of volatilities between three models for forecasting st...
The ability to obtain accurate volatility forecasts is an important issue for the financial analyst....
In the area of financial stock market forecasting, many studies have focused on application of Artif...
Abstract: Financial time series exhibit different stylized facts, namely, asymmetry and nonlinearity...
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 ...
It is well known that one of the obstacles to effective forecasting of exchange rates is heterosceda...
Creative Commons: Reconocimiento 3.0 España (CC BY 3.0 ES)Econometric models have usually estimated ...
AbstractThe objective of this study is to use artificial neural networks for volatility forecasting ...
In recent years, support vector regression (SVR), a novel neural network (NN) technique, has been su...
The objective of this study is to use artificial neural networks for volatility forecasting to enhan...
In the last few decades, a broad strand of literature in finance has implemented artificial neural ...