Stable autoregressive models of known finite order are considered with martingale differences errors scaled by an unknown nonparametric time-varying function generating heterogeneity. An important special case involves structural change in the error variance, but in most practical cases the pattern of variance change over time is unknown and may involve shifts at unknown discrete points in time, continuous evolution or combinations of the two. This paper develops kernel-based estimators of the residual variances and associated adaptive least squares (ALS) estimators of the autoregressive coefficients. These are shown to be asymptotically efficient, having the same limit distribution as the infeasible generalized least squares (GLS). Comparisons...
This dissertation is concerned with the concocting of new adaptive procedures of estimation of linea...
This paper considers adaptive estimation in nonstationary autoregressive moving average models with ...
This article develops statistical methodology for semiparametric models for multiple time series of ...
Stable autoregressive models of known finite order are considered with martingale differences errors s...
Stable autoregressive models of known finite order are considered with martingale differ-ences error...
Assuming that the errors of an autoregressive process form a sequence of martingale differences, the...
This dissertation addresses various issues related to statistical inference in the context of param...
This paper develops a new econometric tool for evolutionary autoregressive models, where the AR coef...
International audienceThe problem of test of fit for Vector AutoRegressive (VAR) processes with unco...
Time-varying VAR models have become increasingly popular and are now widely used for policy analysis...
This work develops adaptive estimators for a linear regression model with serially correlated errors...
This paper proposes a novel and flexible framework to estimate autoregressive models with time-varyi...
A time-varying autoregression is considered with a similarity-based coefficient and possible drift. I...
We focus on the linear model with conditional heteroskedasticity of unknown form. "Adaptive" estimat...
This paper is concerned with estimation and inference in a univariate p-th order autoregressive mode...
This dissertation is concerned with the concocting of new adaptive procedures of estimation of linea...
This paper considers adaptive estimation in nonstationary autoregressive moving average models with ...
This article develops statistical methodology for semiparametric models for multiple time series of ...
Stable autoregressive models of known finite order are considered with martingale differences errors s...
Stable autoregressive models of known finite order are considered with martingale differ-ences error...
Assuming that the errors of an autoregressive process form a sequence of martingale differences, the...
This dissertation addresses various issues related to statistical inference in the context of param...
This paper develops a new econometric tool for evolutionary autoregressive models, where the AR coef...
International audienceThe problem of test of fit for Vector AutoRegressive (VAR) processes with unco...
Time-varying VAR models have become increasingly popular and are now widely used for policy analysis...
This work develops adaptive estimators for a linear regression model with serially correlated errors...
This paper proposes a novel and flexible framework to estimate autoregressive models with time-varyi...
A time-varying autoregression is considered with a similarity-based coefficient and possible drift. I...
We focus on the linear model with conditional heteroskedasticity of unknown form. "Adaptive" estimat...
This paper is concerned with estimation and inference in a univariate p-th order autoregressive mode...
This dissertation is concerned with the concocting of new adaptive procedures of estimation of linea...
This paper considers adaptive estimation in nonstationary autoregressive moving average models with ...
This article develops statistical methodology for semiparametric models for multiple time series of ...