We conduct an empirical study using the quantile-based correlation function to uncover the temporal dependencies in financial time series. The study uses intraday data for the S&P 500 stocks from the New York Stock Exchange. After establishing an empirical overview we compare the quantile-based correlation function to stochastic processes from the GARCH family and find striking differences. This motivates us to propose the quantile-based correlation function as a powerful tool to assess the agreements between stochastic processes and empirical data
Thesis advisor: Zhijie XiaoIn recent years, quantile regression has achieved increasing prominence a...
Understanding correlations in complex systems is crucial in the face of turbulence, such as the ongo...
The spectral analysis method is an important tool in time series analysis and the spectral density p...
Abstract: We scrutinize the realized stock-bond correlation based upon high frequency returns. We us...
The aim of this study is to provide a comprehensive description of the dependence pattern of stock r...
In this paper we introduce quantile cross-spectral analysis of multiple time series which is design...
The author suggests a heuristic method for detecting the dependence of random time series that can b...
This paper introduces a new procedure for analyzing the quantile co-movement of a large number of fi...
The thesis is composed of three parts. Part I introduces the mathematical and statistical tools that...
This article introduces a new procedure for analyzing the quantile co-movement of a large number of ...
[[abstract]]This paper examines the impact of financial variables on the time-varying correlation of...
The thesis is composed of three parts. Part I introduces the mathematical and statistical tools that...
Using weekly returns of S&P 500 constituents, we study the time-varying correlation structure during...
The statistical properties of the increments x(t+T) - x(t) of a financial time series depend on the ...
We introduce the concept of ordinal pattern dependence between time series and show in an explorati...
Thesis advisor: Zhijie XiaoIn recent years, quantile regression has achieved increasing prominence a...
Understanding correlations in complex systems is crucial in the face of turbulence, such as the ongo...
The spectral analysis method is an important tool in time series analysis and the spectral density p...
Abstract: We scrutinize the realized stock-bond correlation based upon high frequency returns. We us...
The aim of this study is to provide a comprehensive description of the dependence pattern of stock r...
In this paper we introduce quantile cross-spectral analysis of multiple time series which is design...
The author suggests a heuristic method for detecting the dependence of random time series that can b...
This paper introduces a new procedure for analyzing the quantile co-movement of a large number of fi...
The thesis is composed of three parts. Part I introduces the mathematical and statistical tools that...
This article introduces a new procedure for analyzing the quantile co-movement of a large number of ...
[[abstract]]This paper examines the impact of financial variables on the time-varying correlation of...
The thesis is composed of three parts. Part I introduces the mathematical and statistical tools that...
Using weekly returns of S&P 500 constituents, we study the time-varying correlation structure during...
The statistical properties of the increments x(t+T) - x(t) of a financial time series depend on the ...
We introduce the concept of ordinal pattern dependence between time series and show in an explorati...
Thesis advisor: Zhijie XiaoIn recent years, quantile regression has achieved increasing prominence a...
Understanding correlations in complex systems is crucial in the face of turbulence, such as the ongo...
The spectral analysis method is an important tool in time series analysis and the spectral density p...