We apply machine learning models to forecast intraday realized volatility (RV), by exploiting commonality in intraday volatility via pooling stock data together, and by incorporating a proxy for the market volatility. Neural networks dominate linear regressions and tree-based models in terms of performance, due to their ability to uncover and model complex latent interactions among variables. Our findings remain robust when we apply trained models to new stocks that have not been included in the training set, thus providing new empirical evidence for a universal volatility mechanism among stocks. Finally, we propose a new approach to forecasting one-day-ahead RVs using past intraday RVs as predictors, and highlight interesting time-of-day e...
The existing publications demonstrate that the limit order book data is useful in predicting short-t...
This thesis studies the impact of sentiment on the prediction of volatility for 100 of the largest ...
Using a machine-learning technique known as random forests, we analyze the role of investor confiden...
This paper examines, for the first time, the performance of machine learning models in realised vola...
Extensive research has been done within the field of finance to better predict future volatility and...
We probe how predictable the short term future behaviour of the Chicago Board Options Exchange (CBOE...
Modeling implied volatility surface (IVS) is of paramount importance to price and hedge an option. T...
This thesis is focused on multiple-step-ahead forecasting of Nasdaq Composite index returns and dail...
In this paper we consider a nonlinear model based on neural networks as well as linear models to for...
Volatility modelling is a field dominated by classic Econometric methods such as the Nobel Prize win...
In finance, volatility is defined as a measure of variation ofa trading price series over time. As v...
The problem of forecasting market volatility is a difficult task for most fund managers. Volatility...
Predicting volatility is a critical activity for taking risk- adjusted decisions in asset trading an...
This paper uses Long Short Term Memory Recurrent Neural Networks to extract information from the int...
Stock market forecasting is a knotty challenging task due to the highly noisy, nonparametric, comple...
The existing publications demonstrate that the limit order book data is useful in predicting short-t...
This thesis studies the impact of sentiment on the prediction of volatility for 100 of the largest ...
Using a machine-learning technique known as random forests, we analyze the role of investor confiden...
This paper examines, for the first time, the performance of machine learning models in realised vola...
Extensive research has been done within the field of finance to better predict future volatility and...
We probe how predictable the short term future behaviour of the Chicago Board Options Exchange (CBOE...
Modeling implied volatility surface (IVS) is of paramount importance to price and hedge an option. T...
This thesis is focused on multiple-step-ahead forecasting of Nasdaq Composite index returns and dail...
In this paper we consider a nonlinear model based on neural networks as well as linear models to for...
Volatility modelling is a field dominated by classic Econometric methods such as the Nobel Prize win...
In finance, volatility is defined as a measure of variation ofa trading price series over time. As v...
The problem of forecasting market volatility is a difficult task for most fund managers. Volatility...
Predicting volatility is a critical activity for taking risk- adjusted decisions in asset trading an...
This paper uses Long Short Term Memory Recurrent Neural Networks to extract information from the int...
Stock market forecasting is a knotty challenging task due to the highly noisy, nonparametric, comple...
The existing publications demonstrate that the limit order book data is useful in predicting short-t...
This thesis studies the impact of sentiment on the prediction of volatility for 100 of the largest ...
Using a machine-learning technique known as random forests, we analyze the role of investor confiden...