We develop the limit theory of the quantilogram and cross-quantilogram under long memory. We establish the sub-root-n central limit theorems for quantilograms that depend on nuisance parameters. We propose a moving block bootstrap (MBB) procedure for inference and we establish its consistency thereby enabling a consistent confidence interval construction for the quantilograms. The newly developed reduction principles for the quantilograms serve as the main technical devices used to derive the asymptotics and establish the validity of MBB. We report some simulation evidence that our methods work satisfactorily. We apply our method to quantile predictive relations between financial returns and long-memory predictors
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...
Many time series in diverse fields have been found to exhibit long memory. This paper analyzes the b...
We propose Quantile Graphical Models (QGMs) to characterize predictive and conditional independence ...
This paper proposes the cross-quantilogram to measure the quantile dependence between two time serie...
AbstractConsider a near-integrated time series driven by a heavy-tailed and long-memory noise εt=∑j=...
In this thesis we consider estimation of the tail index for heavy tailed stochastic volatility model...
The thesis is made up of a number of studies involving long-range dependence (LRD), that is, a slow...
This volume collects recent works on weakly dependent, long-memory and multifractal processes and in...
A description of the weak and strong limiting behaviour of weighted uniform tail empirical and tail ...
We investigate the construction of various confidence bands for quantiles of the time between event ...
This paper aims at enhancing the understanding of long-range dependence (LRD) by focusing on mechani...
Due to the rapidly increasing need for methods of data compression, quantization has become a flouri...
We will show under minimal conditions on differentiability and dependence that the central limit th...
In this work we investigate an alternative bootstrap approach based on a result of Ramsey (1974) and...
We consider statistical inference in the presence of serial dependence. The main focus is on use of ...
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...
Many time series in diverse fields have been found to exhibit long memory. This paper analyzes the b...
We propose Quantile Graphical Models (QGMs) to characterize predictive and conditional independence ...
This paper proposes the cross-quantilogram to measure the quantile dependence between two time serie...
AbstractConsider a near-integrated time series driven by a heavy-tailed and long-memory noise εt=∑j=...
In this thesis we consider estimation of the tail index for heavy tailed stochastic volatility model...
The thesis is made up of a number of studies involving long-range dependence (LRD), that is, a slow...
This volume collects recent works on weakly dependent, long-memory and multifractal processes and in...
A description of the weak and strong limiting behaviour of weighted uniform tail empirical and tail ...
We investigate the construction of various confidence bands for quantiles of the time between event ...
This paper aims at enhancing the understanding of long-range dependence (LRD) by focusing on mechani...
Due to the rapidly increasing need for methods of data compression, quantization has become a flouri...
We will show under minimal conditions on differentiability and dependence that the central limit th...
In this work we investigate an alternative bootstrap approach based on a result of Ramsey (1974) and...
We consider statistical inference in the presence of serial dependence. The main focus is on use of ...
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...
Many time series in diverse fields have been found to exhibit long memory. This paper analyzes the b...
We propose Quantile Graphical Models (QGMs) to characterize predictive and conditional independence ...