An autoregressive-ARCH model with possible exogeneous variables is treated. We estimate the conditional volatility of the model by applying feedforward networks to the residuals and prove consistency and asymptotic normality for the estimates under the rate of feedforward networks complexity. Recurrent neural networks estimates of GARCH and value-at-risk is studied. We prove consistency and asymptotic normality for the recurrent neural networks ARMA estimator under the rate of recurrent networks complexity. We also overcome the estimation problem in stochastic variance models in discrete time by feedforward networks and the introduction of a new distributions on the innovations. We use the method to calculate market risk such as expected sh...
Cryptocurrencies are known for their high fluctuating prices. In order to minimize the risk for inve...
In this article it is presented a proposal of improving the data analysis process of Operational Ris...
The problem of structural changes (variations) play a central role in many scientific fields. One of...
In this paper, we show that the recent integration of statistical models with deep recurrent neural ...
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
The main discussion of this paper is on the comparison of properties of different prediction methods...
Financial and economic time series forecasting has never been an easy task due to its sensibility to...
In the last few decades, a broad strand of literature in finance has implemented artificial neural n...
The value at risk (VaR) measure often relies on an assumption about the return (or price) dis-tribut...
AbstractIn this paper, we investigate the volatility dynamics of EUR/GBP currency using statistical ...
In the present work, we investigated how to correct the questionable normality, linear and quadratic...
Considering the fact that markets are generally influenced by different external factors, the stock ...
On the basis of the recommendation of the Basel Committee on Banking Supervision to transition from ...
In the context of nonlinear financial time series, both conditional mean and variance (volatility) t...
Portfolio managers, option traders and market makers are all interested in volatility forecasting in...
Cryptocurrencies are known for their high fluctuating prices. In order to minimize the risk for inve...
In this article it is presented a proposal of improving the data analysis process of Operational Ris...
The problem of structural changes (variations) play a central role in many scientific fields. One of...
In this paper, we show that the recent integration of statistical models with deep recurrent neural ...
It is shown that time series about financial market variables are highly nonlinearly dependent on ti...
The main discussion of this paper is on the comparison of properties of different prediction methods...
Financial and economic time series forecasting has never been an easy task due to its sensibility to...
In the last few decades, a broad strand of literature in finance has implemented artificial neural n...
The value at risk (VaR) measure often relies on an assumption about the return (or price) dis-tribut...
AbstractIn this paper, we investigate the volatility dynamics of EUR/GBP currency using statistical ...
In the present work, we investigated how to correct the questionable normality, linear and quadratic...
Considering the fact that markets are generally influenced by different external factors, the stock ...
On the basis of the recommendation of the Basel Committee on Banking Supervision to transition from ...
In the context of nonlinear financial time series, both conditional mean and variance (volatility) t...
Portfolio managers, option traders and market makers are all interested in volatility forecasting in...
Cryptocurrencies are known for their high fluctuating prices. In order to minimize the risk for inve...
In this article it is presented a proposal of improving the data analysis process of Operational Ris...
The problem of structural changes (variations) play a central role in many scientific fields. One of...