AbstractConsider a near-integrated time series driven by a heavy-tailed and long-memory noise εt=∑j=0∞cjηt−j, where {ηj} is a sequence of i.i.d random variables belonging to the domain of attraction of a stable law with index α. The limit distribution of the quantile estimate and the semi-parametric estimate of the autoregressive parameters with long- and short-range dependent innovations are established in this paper. Under certain regularity conditions, it is shown that when the noise is short-memory, the quantile estimate converges weakly to a mixture of a Gaussian process and a stable Ornstein–Uhlenbeck (O–U) process while the semi-parametric estimate converges weakly to a normal distribution. But when the noise is long-memory, the limi...
Autoregressive models are commonly employed to analyze empirical time series. In practice, however, ...
This book integrates the fundamentals of asymptotic theory of statistical inference for time series ...
The thesis is devoted to limit theorems for stochastic models with long-range dependence. We first c...
AbstractConsider a near-integrated time series driven by a heavy-tailed and long-memory noise εt=∑j=...
We establish the asymptotic theory in quantile autoregression when the model parameter is specified ...
This paper investigates regression quantiles(RQ) for unstable autoregressive models. This uniform Ba...
AbstractThis paper investigates regression quantiles (RQ) for unstable autoregressive models. The un...
Abstract. We study statistical inference in quantile autoregression models when the largest au-toreg...
<p>A quantile autoregresive model is a useful extension of classical autoregresive models as it can ...
This paper investigates regression quantiles (RQ) for unstable autoregres-sive models. The uniform B...
This thesis studies the robust diagnostic checking, quantile inference, and the least absolute devia...
In this thesis we consider estimation of the tail index for heavy tailed stochastic volatility model...
We develop the limit theory of the quantilogram and cross-quantilogram under long memory. We establi...
A description of the weak and strong limiting behaviour of weighted uniform tail empirical and tail ...
We consider nonparametric estimation of the conditional qth quantile for stationary time series. We ...
Autoregressive models are commonly employed to analyze empirical time series. In practice, however, ...
This book integrates the fundamentals of asymptotic theory of statistical inference for time series ...
The thesis is devoted to limit theorems for stochastic models with long-range dependence. We first c...
AbstractConsider a near-integrated time series driven by a heavy-tailed and long-memory noise εt=∑j=...
We establish the asymptotic theory in quantile autoregression when the model parameter is specified ...
This paper investigates regression quantiles(RQ) for unstable autoregressive models. This uniform Ba...
AbstractThis paper investigates regression quantiles (RQ) for unstable autoregressive models. The un...
Abstract. We study statistical inference in quantile autoregression models when the largest au-toreg...
<p>A quantile autoregresive model is a useful extension of classical autoregresive models as it can ...
This paper investigates regression quantiles (RQ) for unstable autoregres-sive models. The uniform B...
This thesis studies the robust diagnostic checking, quantile inference, and the least absolute devia...
In this thesis we consider estimation of the tail index for heavy tailed stochastic volatility model...
We develop the limit theory of the quantilogram and cross-quantilogram under long memory. We establi...
A description of the weak and strong limiting behaviour of weighted uniform tail empirical and tail ...
We consider nonparametric estimation of the conditional qth quantile for stationary time series. We ...
Autoregressive models are commonly employed to analyze empirical time series. In practice, however, ...
This book integrates the fundamentals of asymptotic theory of statistical inference for time series ...
The thesis is devoted to limit theorems for stochastic models with long-range dependence. We first c...