PhDThe degree of dependence inherent in a dataset, either in the time series domain or in multivariate analysis, commonly gives rise to two distinct types of processes: stationary and non-stationary (unit root). This thesis focuses on detecting the underlying degree of dependence in a certain dataset of unit (1; T) or higher (N; T) dimension. The first part of the thesis aims at identifying the intrinsic strength of structure in a large dimensional setup. It is known that all information needed for this purpose is contained in the column-sum norm of the variance-covariance matrix of the dataset. This approaches in unity at rate N , 0 < 1. The strength of structure can then be determined by the value of . On this basis, a summa...
In the study of random processes, dependence is the rule rather than the exception. To facilitate th...
We propose two methods to measure all (linear and nonlinear) statistical dependences in a stationary...
The author suggests a heuristic method for detecting the dependence of random time series that can b...
This paper proposes some new tests for detecting the presence of a unit root in quite general time s...
The tests of Robinson (Journal of the American Statistical Association, 89, 1420-37, 1994a) are used...
There has been a substantial debate over whether most macroeconomic time series have a unit root. Th...
In analysing time series of counts, the need to test for the presence of a dependence structure rout...
This thesis is a collection of four essays with main focus on testing for a unit root under structur...
A test for serial independence is proposed which is related to the BDS test but focuses on tail even...
In cointegration analysis, it is customary to test the hypothesis of unit roots separately for each ...
This paper provides a general methodology for testing for dependence in time series data, with parti...
This paper provides a general methodology for testing for dependence in time series data, with parti...
The increasing availability of new datasets where the time-series dimension and the cross-section di...
This paper reconsiders the nature of the trends (i.e. deterministic or stochastic) in macroeconomic ...
Many of the key macro-economic and financial variables in developed economies are characterize...
In the study of random processes, dependence is the rule rather than the exception. To facilitate th...
We propose two methods to measure all (linear and nonlinear) statistical dependences in a stationary...
The author suggests a heuristic method for detecting the dependence of random time series that can b...
This paper proposes some new tests for detecting the presence of a unit root in quite general time s...
The tests of Robinson (Journal of the American Statistical Association, 89, 1420-37, 1994a) are used...
There has been a substantial debate over whether most macroeconomic time series have a unit root. Th...
In analysing time series of counts, the need to test for the presence of a dependence structure rout...
This thesis is a collection of four essays with main focus on testing for a unit root under structur...
A test for serial independence is proposed which is related to the BDS test but focuses on tail even...
In cointegration analysis, it is customary to test the hypothesis of unit roots separately for each ...
This paper provides a general methodology for testing for dependence in time series data, with parti...
This paper provides a general methodology for testing for dependence in time series data, with parti...
The increasing availability of new datasets where the time-series dimension and the cross-section di...
This paper reconsiders the nature of the trends (i.e. deterministic or stochastic) in macroeconomic ...
Many of the key macro-economic and financial variables in developed economies are characterize...
In the study of random processes, dependence is the rule rather than the exception. To facilitate th...
We propose two methods to measure all (linear and nonlinear) statistical dependences in a stationary...
The author suggests a heuristic method for detecting the dependence of random time series that can b...