It is well known that one of the obstacles to effective forecasting of exchange rates is heteroscedasticity (non-stationary conditional variance). The autoregressive conditional heteroscedastic (ARCH) model and its variants have been used to estimate a time dependent variance for many financial time series. However, such models are essentially linear in form and we can ask whether a non-linear model for variance can improve results just as non-linear models (such as neural networks) for the mean have done. In this paper we consider two neural network models for variance estimation. Mixture Density Networks (Bishop 1994, Nix and Weigend 1994) combine a Multi-Layer Perceptron (MLP) and a mixture model to estimate the conditional data density....
Real-world time series such as econometric time series are rarely linear and they have characteristi...
Recently, deep neural networks have been widely used to solve financial risk modeling and forecastin...
Volatility is an important variable in financial forecasting. Forecasting volatility requires a deve...
The ability to obtain accurate volatility forecasts is an important issue for the financial analyst....
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
Portfolio managers, option traders and market makers are all interested in volatility forecasting in...
In this paper, the exchange rate forecasting performance of neural network models are evaluated agai...
The ability to obtain accurate volatility forecasts is an important issue for the financial analyst....
Despite the lack of a precise definition of volatility in finance, the estimation of volatility and ...
Accurately forecasting multivariate volatility plays a crucial role for the financial industry. The ...
This thesis investigates forecasting performance of Quantile Regression Neural Networks in forecasti...
In the last few decades, a broad strand of literature in finance has implemented artificial neural ...
La habilidad para obtener pronósticos precisos de la volatilidad es un importante problema para el a...
This study uses the fourteen stock indices as the sample and then utilizes eight parametric volatili...
Background: Since high-frequency data have become available, an unbiased volatility estimator, i.e. ...
Real-world time series such as econometric time series are rarely linear and they have characteristi...
Recently, deep neural networks have been widely used to solve financial risk modeling and forecastin...
Volatility is an important variable in financial forecasting. Forecasting volatility requires a deve...
The ability to obtain accurate volatility forecasts is an important issue for the financial analyst....
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
Portfolio managers, option traders and market makers are all interested in volatility forecasting in...
In this paper, the exchange rate forecasting performance of neural network models are evaluated agai...
The ability to obtain accurate volatility forecasts is an important issue for the financial analyst....
Despite the lack of a precise definition of volatility in finance, the estimation of volatility and ...
Accurately forecasting multivariate volatility plays a crucial role for the financial industry. The ...
This thesis investigates forecasting performance of Quantile Regression Neural Networks in forecasti...
In the last few decades, a broad strand of literature in finance has implemented artificial neural ...
La habilidad para obtener pronósticos precisos de la volatilidad es un importante problema para el a...
This study uses the fourteen stock indices as the sample and then utilizes eight parametric volatili...
Background: Since high-frequency data have become available, an unbiased volatility estimator, i.e. ...
Real-world time series such as econometric time series are rarely linear and they have characteristi...
Recently, deep neural networks have been widely used to solve financial risk modeling and forecastin...
Volatility is an important variable in financial forecasting. Forecasting volatility requires a deve...