We develop a LSTM neural network for the joint prediction of volatility, realized volatility and Value-at-Risk. Regularization by means of pooling the dynamic structure for the different outputs of the models is shown to be a powerful method for improving forecasts and smoothing VaR estimates. The method is applied to daily and high-frequency returns of the S&P500 index over a period of 25 years
Despite the impressive success of deep neural networks in many application areas, neural network mod...
This thesis is focused on multiple-step-ahead forecasting of Nasdaq Composite index returns and dail...
Financial markets are highly complex and volatile; thus, learning about such markets for the sake of...
We develop a LSTM neural network for the joint prediction of volatility, realized volatility and Val...
In the last few decades, a broad strand of literature in finance has implemented artificial neural n...
Volatility is a measurement of the risk of financial products. A stock will hit new highs and lows o...
This paper uses Long Short Term Memory Recurrent Neural Networks to extract information from the int...
Predicting volatility is a critical activity for taking risk- adjusted decisions in asset trading an...
In this paper we consider a nonlinear model based on neural networks as well as linear models to for...
Volatility models of price fluctuations are well studied in the econometrics literature, with more t...
In this paper, we show that the recent integration of statistical models with deep recurrent neural ...
Events such as the Financial Crisis of 2007–2008 or the COVID-19 pandemic caused significant losses ...
The value at risk (VaR) measure often relies on an assumption about the return (or price) dis-tribut...
Financial market forecasting is a challenging and complex task due to the sensitivity of the market ...
Financial and economic time series forecasting has never been an easy task due to its sensibility to...
Despite the impressive success of deep neural networks in many application areas, neural network mod...
This thesis is focused on multiple-step-ahead forecasting of Nasdaq Composite index returns and dail...
Financial markets are highly complex and volatile; thus, learning about such markets for the sake of...
We develop a LSTM neural network for the joint prediction of volatility, realized volatility and Val...
In the last few decades, a broad strand of literature in finance has implemented artificial neural n...
Volatility is a measurement of the risk of financial products. A stock will hit new highs and lows o...
This paper uses Long Short Term Memory Recurrent Neural Networks to extract information from the int...
Predicting volatility is a critical activity for taking risk- adjusted decisions in asset trading an...
In this paper we consider a nonlinear model based on neural networks as well as linear models to for...
Volatility models of price fluctuations are well studied in the econometrics literature, with more t...
In this paper, we show that the recent integration of statistical models with deep recurrent neural ...
Events such as the Financial Crisis of 2007–2008 or the COVID-19 pandemic caused significant losses ...
The value at risk (VaR) measure often relies on an assumption about the return (or price) dis-tribut...
Financial market forecasting is a challenging and complex task due to the sensitivity of the market ...
Financial and economic time series forecasting has never been an easy task due to its sensibility to...
Despite the impressive success of deep neural networks in many application areas, neural network mod...
This thesis is focused on multiple-step-ahead forecasting of Nasdaq Composite index returns and dail...
Financial markets are highly complex and volatile; thus, learning about such markets for the sake of...