We consider estimation and inference in fractionally integrated time series models driven by shocks which can display conditional and unconditional heteroskedasticity of unknown form. Although the standard conditional sum-of-squares (CSS) estimator remains consistent and asymptotically normal in such cases, unconditional heteroskedasticity in ates its variance matrix by a scalar quantity, λ > 1, thereby inducing a loss in efficiency relative to the unconditionally homoskedastic case, λ = 1. We propose an adaptive version of the CSS estimator, based on non-parametric kernel-based estimation of the unconditional volatility process. We show that adaptive estimation eliminates the factor λ from the variance matrix, thereby delivering the same a...
Financial data sets exhibit conditional heteroskedasticity and asymmetric volatility. In this paper ...
This dissertation is a collection of four essays on nonstationary time series econometrics, which ar...
In this article, we propose a robust statistical approach to select an appropriate error distributio...
We consider estimation and inference in fractionally integrated time series models driven by shocks ...
This is the author accepted manuscript. The final version is available from Taylor & Francis via the...
We consider the problem of conducting estimation and inference on the parameters of univariate heter...
We consider estimation and hypothesis testing on the coefficients of the co-integrating relations an...
We investigate two problems in modelling time series data that exhibit conditional heteroscedasticit...
We focus on the linear model with conditional heteroskedasticity of unknown form. "Adaptive" estimat...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
Conditional heteroskedasticity of the error terms is a common occurrence in financial factor models,...
Empirical evidence from time series methods which assume the usual I(0)/I(1) paradigm suggests that ...
This paper considers nonstationary fractional autoregressive integrated moving-average ( p, d, q) mo...
We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) mode...
This paper offers a new method for estimation and forecasting of the volatility of financial time se...
Financial data sets exhibit conditional heteroskedasticity and asymmetric volatility. In this paper ...
This dissertation is a collection of four essays on nonstationary time series econometrics, which ar...
In this article, we propose a robust statistical approach to select an appropriate error distributio...
We consider estimation and inference in fractionally integrated time series models driven by shocks ...
This is the author accepted manuscript. The final version is available from Taylor & Francis via the...
We consider the problem of conducting estimation and inference on the parameters of univariate heter...
We consider estimation and hypothesis testing on the coefficients of the co-integrating relations an...
We investigate two problems in modelling time series data that exhibit conditional heteroscedasticit...
We focus on the linear model with conditional heteroskedasticity of unknown form. "Adaptive" estimat...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
Conditional heteroskedasticity of the error terms is a common occurrence in financial factor models,...
Empirical evidence from time series methods which assume the usual I(0)/I(1) paradigm suggests that ...
This paper considers nonstationary fractional autoregressive integrated moving-average ( p, d, q) mo...
We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) mode...
This paper offers a new method for estimation and forecasting of the volatility of financial time se...
Financial data sets exhibit conditional heteroskedasticity and asymmetric volatility. In this paper ...
This dissertation is a collection of four essays on nonstationary time series econometrics, which ar...
In this article, we propose a robust statistical approach to select an appropriate error distributio...