In this paper, we develop finite-sample inference procedures for stationary and nonstationary autoregressive (AR) models. The method is based on special properties of Markov processes and a split-sample technique. The results on Markovian processes (intercalary independence and truncation) only require the existence of conditional densities. They are proved for possibly nonstationary and/or non-Gaussian multivariate Markov processes. In the context of a linear regression model with AR(1) errors, we show how these results can be used to simplify the distributional properties of the model by conditioning a subset of the data on the remaining observations. This transformation leads to a new model which has the form of a two-sided autoregressio...
This thesis is concerned with the finite sample properties of some of the most widely used two-stage...
This paper considers the location-scale quantile autoregression in which the location and scale para...
Thesis (Ph.D.)--University of Washington, 2022This dissertation aims to address estimation and infer...
In this paper, we develop procedures for making finite-sample inference in stationary and nonstation...
SIGLEAvailable from British Library Document Supply Centre-DSC:3597.760(99/468) / BLDSC - British Li...
autoregressions and "nite-sample inference for stationary and nonstationary autoregressive proc...
In this paper, we develop finite-sample inference procedures for stationary and nonstationary autore...
We investigate the finite sample behaviour of the ordinary least squares (OLS) estimator in vector a...
The class of autoregressive (AR) processes is extensively used to model temporal dependence in obser...
This paper develops tests of the null hypothesis of linearity in the context of autoregressive mode...
UnrestrictedThis dissertation focuses on the AR approximation of long memory processes and its appli...
This paper discusses model-based inference in an autoregressive model for fractional processes which...
Autoregressive models are commonly employed to analyze empirical time series. In practice, however, ...
Statistical inference and hypothesis testing in the framework of several different models for discre...
Jury: P. Bougerol (rapporteur), C. Goldie (rapporteur), Y. Guivarc'h (président), X. Guyon (examinat...
This thesis is concerned with the finite sample properties of some of the most widely used two-stage...
This paper considers the location-scale quantile autoregression in which the location and scale para...
Thesis (Ph.D.)--University of Washington, 2022This dissertation aims to address estimation and infer...
In this paper, we develop procedures for making finite-sample inference in stationary and nonstation...
SIGLEAvailable from British Library Document Supply Centre-DSC:3597.760(99/468) / BLDSC - British Li...
autoregressions and "nite-sample inference for stationary and nonstationary autoregressive proc...
In this paper, we develop finite-sample inference procedures for stationary and nonstationary autore...
We investigate the finite sample behaviour of the ordinary least squares (OLS) estimator in vector a...
The class of autoregressive (AR) processes is extensively used to model temporal dependence in obser...
This paper develops tests of the null hypothesis of linearity in the context of autoregressive mode...
UnrestrictedThis dissertation focuses on the AR approximation of long memory processes and its appli...
This paper discusses model-based inference in an autoregressive model for fractional processes which...
Autoregressive models are commonly employed to analyze empirical time series. In practice, however, ...
Statistical inference and hypothesis testing in the framework of several different models for discre...
Jury: P. Bougerol (rapporteur), C. Goldie (rapporteur), Y. Guivarc'h (président), X. Guyon (examinat...
This thesis is concerned with the finite sample properties of some of the most widely used two-stage...
This paper considers the location-scale quantile autoregression in which the location and scale para...
Thesis (Ph.D.)--University of Washington, 2022This dissertation aims to address estimation and infer...