This article introduces a new procedure for analyzing the quantile co-movement of a large number of financial time series based on a large-scale panel data model with factor structures. The proposed method attempts to capture the unobservable heterogeneity of each of the financial time series based on sensitivity to explanatory variables and to the unobservable factor structure. In our model, the dimension of the common factor structure varies across quantiles, and the explanatory variables is allowed to depend on the factor structure. The proposed method allows for both cross-sectional and serial dependence, and heteroscedasticity, which are common in financial markets. We propose new estimation procedures for both frequentist and Bayesia...
This investigation is one of the first to adopt quantile regression (QR) technique to examine covari...
In the first chapter of this dissertation, I develop a method that extends quantile regressions to h...
This thesis is concerned with volatility estimation using financial panels and bias-reduction in non...
This article introduces a new procedure for analyzing the quantile co-movement of a large number of ...
This paper introduces a new procedure for analyzing the quantile co-movement of a large number of fi...
This article introduces a new procedure for clustering a large number of financial time series based...
Available online: 09 August 2018This paper examines the cross-quantile dependence between developed ...
This article introduces a new model to analyze financial contagion based on a modified coexceedance ...
We propose a simple new semi-parametric approach to investigate whether co-dependence across markets...
We develop a new technique to estimate vector autoregressions with a common factor error structure b...
Quantile FactorModels (QFM) represent a new class of factor models for high-dimensional panel data. ...
Understanding how cross-sectional units interact with each other in a panel setting is an important ...
My DPhil thesis includes three essays on time series econometrics and financial econometrics, prece...
This thesis develops the panel data models that are designed to capture and explain observed comovem...
In the practice of risk management, an important consideration in the portfolio choice problem is th...
This investigation is one of the first to adopt quantile regression (QR) technique to examine covari...
In the first chapter of this dissertation, I develop a method that extends quantile regressions to h...
This thesis is concerned with volatility estimation using financial panels and bias-reduction in non...
This article introduces a new procedure for analyzing the quantile co-movement of a large number of ...
This paper introduces a new procedure for analyzing the quantile co-movement of a large number of fi...
This article introduces a new procedure for clustering a large number of financial time series based...
Available online: 09 August 2018This paper examines the cross-quantile dependence between developed ...
This article introduces a new model to analyze financial contagion based on a modified coexceedance ...
We propose a simple new semi-parametric approach to investigate whether co-dependence across markets...
We develop a new technique to estimate vector autoregressions with a common factor error structure b...
Quantile FactorModels (QFM) represent a new class of factor models for high-dimensional panel data. ...
Understanding how cross-sectional units interact with each other in a panel setting is an important ...
My DPhil thesis includes three essays on time series econometrics and financial econometrics, prece...
This thesis develops the panel data models that are designed to capture and explain observed comovem...
In the practice of risk management, an important consideration in the portfolio choice problem is th...
This investigation is one of the first to adopt quantile regression (QR) technique to examine covari...
In the first chapter of this dissertation, I develop a method that extends quantile regressions to h...
This thesis is concerned with volatility estimation using financial panels and bias-reduction in non...