Abstract—Analyzing the changes in volatility is an important aspect in financial data analysis leading to effective estimation of risk and discovering underlying causes of such changes. While there is a rich literature in estimating implied and stochastic volatility in financial time series using traditional econometric methods, the application of machine learning methods such as sparse regression with temporal smoothness constraints is still in its infancy. In this paper, we propose a sparse, smooth regularized regression model to infer the volatil-ity of the data while explicitly accounting for dependencies between different companies. Using real stock market data, we construct dynamic time varying graphs for different sectors of companie...
Data from the financial markets are a source of challenging inference problems. Machine learning too...
The focus of this chapter is on the statistical techniques used for analyzing prices andreturns in f...
Conventional time series theory and spectral analysis have independently achieved significant popula...
Interconnectedness between stocks and firms plays a crucial role in the volatility contagion phenome...
Interconnectedness between stocks and firms plays a crucial role in the volatility contagion phenome...
In this thesis we apply graphical statistics models for analyzing causality relations among various ...
A popular approach in the investigation of the short-term behavior of a non-stationary time series i...
This paper presents comprehensive empirical evidence on the dynamics and causality within 30 US indu...
This paper analyzes the multivariate volatility effects among the indexes returns time series of the...
The stochastic volatility (SV) model and its variants are widely used in the financial sector, while...
According to behavioral finance, stock market returns are influenced by emotional, social and psycho...
Prediction of the stock market has been a research topic for decades. Recently, data from social med...
This paper provides an extensive analysis of the predictive ability of financial volatility measures...
Abstract: This article investigates causality structure of financial time series. We concentrate on ...
The dissertation consists of three studies concerning the research fields of evaluating volatility a...
Data from the financial markets are a source of challenging inference problems. Machine learning too...
The focus of this chapter is on the statistical techniques used for analyzing prices andreturns in f...
Conventional time series theory and spectral analysis have independently achieved significant popula...
Interconnectedness between stocks and firms plays a crucial role in the volatility contagion phenome...
Interconnectedness between stocks and firms plays a crucial role in the volatility contagion phenome...
In this thesis we apply graphical statistics models for analyzing causality relations among various ...
A popular approach in the investigation of the short-term behavior of a non-stationary time series i...
This paper presents comprehensive empirical evidence on the dynamics and causality within 30 US indu...
This paper analyzes the multivariate volatility effects among the indexes returns time series of the...
The stochastic volatility (SV) model and its variants are widely used in the financial sector, while...
According to behavioral finance, stock market returns are influenced by emotional, social and psycho...
Prediction of the stock market has been a research topic for decades. Recently, data from social med...
This paper provides an extensive analysis of the predictive ability of financial volatility measures...
Abstract: This article investigates causality structure of financial time series. We concentrate on ...
The dissertation consists of three studies concerning the research fields of evaluating volatility a...
Data from the financial markets are a source of challenging inference problems. Machine learning too...
The focus of this chapter is on the statistical techniques used for analyzing prices andreturns in f...
Conventional time series theory and spectral analysis have independently achieved significant popula...