Quasi-likelihood ratio tests for autoregressive moving-average (ARMA) models are examined. The ARMA models are stationary and invertible with white-noise terms that are not restricted to be normally distributed. The white-noise terms are instead subject to the weaker assumption that they are independently and identically distributed with an unspecified distribution. Bootstrap methods are used to improve control of the finite sample significance levels. The bootstrap is used in two ways: first, to approximate a Bartlett-type correction; and second, to estimate the p-value of the observed test statistic. Some simulation evidence is provided. The bootstrap p-value test emerges as the best performer in terms of controlling significance levels
This paper proposes bootstrap assisted specification tests for the autoregressive fractionally integ...
A model which describes the probability structure of a sequence of observations is called a stochast...
he detection of change-points in time series is an important issue especially in economics, finance,...
Abstract: In this paper I propose a Likelihood Ratio test for a unit root (LR) with a local-to-unity...
ABSTRACT. In this paper we derive quasi-maximum likelihood estimators for the parameters of the thre...
This paper derives the asymptotic null distribution of a quasilikelihood ratio test statistic for an...
This thesis proposes the global self-weighted least absolute deviation (LAD) estimator for finite an...
A problem of interest in economic and finance applications is testing whether ARMA (Autoregressive m...
We consider tests for lack of fit in ARMA models with nonindependent innovations. In this framework,...
The identification of de order p,q, of ARMA models is a critical step in time-series modelling. In c...
When a nuisance parameter is unidentified under the null hypothesis, standard testing procedures can...
<p class="PargrafoResumoAbstract">The identification of de order p,q, of ARMA models is a critical s...
We consider the use of a sieve bootstrap based on moving average (MA) and autoregressive moving aver...
This paper proposes bootstrap assisted specification tests for the autoregressive fractionally integ...
This paper investigates the joint limiting distribution of the residual autocorrelation functions an...
This paper proposes bootstrap assisted specification tests for the autoregressive fractionally integ...
A model which describes the probability structure of a sequence of observations is called a stochast...
he detection of change-points in time series is an important issue especially in economics, finance,...
Abstract: In this paper I propose a Likelihood Ratio test for a unit root (LR) with a local-to-unity...
ABSTRACT. In this paper we derive quasi-maximum likelihood estimators for the parameters of the thre...
This paper derives the asymptotic null distribution of a quasilikelihood ratio test statistic for an...
This thesis proposes the global self-weighted least absolute deviation (LAD) estimator for finite an...
A problem of interest in economic and finance applications is testing whether ARMA (Autoregressive m...
We consider tests for lack of fit in ARMA models with nonindependent innovations. In this framework,...
The identification of de order p,q, of ARMA models is a critical step in time-series modelling. In c...
When a nuisance parameter is unidentified under the null hypothesis, standard testing procedures can...
<p class="PargrafoResumoAbstract">The identification of de order p,q, of ARMA models is a critical s...
We consider the use of a sieve bootstrap based on moving average (MA) and autoregressive moving aver...
This paper proposes bootstrap assisted specification tests for the autoregressive fractionally integ...
This paper investigates the joint limiting distribution of the residual autocorrelation functions an...
This paper proposes bootstrap assisted specification tests for the autoregressive fractionally integ...
A model which describes the probability structure of a sequence of observations is called a stochast...
he detection of change-points in time series is an important issue especially in economics, finance,...