Hypothesis testing in models allowing for trending processes that are possibly nonstationary and non-Gaussian is considered. Using semiparametric estimators, joint hypothesis testing for these processes is developed, taking into account the one-sided nature of typical hypotheses on the persistence parameter in order to gain power. The results are applicable for a wide class of processes and are easy to implement. They are illustrated with an application to the dynamics of GDP
Wiener process-a random process with continuous time-plays an important role in mathematics, physics...
textabstractIn this paper, we make use of state space models to investigate the presence of stochast...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
This paper proposes a test for the correct specification of a dynamic time-series model that is take...
We consider a model with both a parametric global trend and a nonparametric local trend. This model ...
This paper studies how to detect structural change characterized by a shift in persistence of a time...
A semiparametric model is proposed in which a parametric filtering of a nonstationary time series, i...
In this paper we consider tests for the null of (trend-) stationarity against the alternative of a c...
Statistical tests for trend in recurrent event data not following a Poisson process are generally co...
Time series in many areas of application often display local or global trends. Typical models that p...
In this article, we construct the uniform confidence band (UCB) of nonparametric trend in a partiall...
The paper develops a novel testing procedure for hypotheses on deterministic trends in a multivariat...
AbstractIn this paper, a new asymptotic theory is developed for nearly nonstationary autoregressive ...
Detecting changes in an incoming data flow is immensely crucial for understanding inherent dependenc...
AbstractWe consider a multivariate point process with a parametric intensity process which splits in...
Wiener process-a random process with continuous time-plays an important role in mathematics, physics...
textabstractIn this paper, we make use of state space models to investigate the presence of stochast...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
This paper proposes a test for the correct specification of a dynamic time-series model that is take...
We consider a model with both a parametric global trend and a nonparametric local trend. This model ...
This paper studies how to detect structural change characterized by a shift in persistence of a time...
A semiparametric model is proposed in which a parametric filtering of a nonstationary time series, i...
In this paper we consider tests for the null of (trend-) stationarity against the alternative of a c...
Statistical tests for trend in recurrent event data not following a Poisson process are generally co...
Time series in many areas of application often display local or global trends. Typical models that p...
In this article, we construct the uniform confidence band (UCB) of nonparametric trend in a partiall...
The paper develops a novel testing procedure for hypotheses on deterministic trends in a multivariat...
AbstractIn this paper, a new asymptotic theory is developed for nearly nonstationary autoregressive ...
Detecting changes in an incoming data flow is immensely crucial for understanding inherent dependenc...
AbstractWe consider a multivariate point process with a parametric intensity process which splits in...
Wiener process-a random process with continuous time-plays an important role in mathematics, physics...
textabstractIn this paper, we make use of state space models to investigate the presence of stochast...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...