Fractionally integrated vector autoregressive models allow to capture persistence in time series data in a very flexible way. Additional flexibility for the short memory properties of the model can be attained by using the fractional lag perator of Johansen (2008) in the vector autoregressive polynomial. However, it also makes maximum likelihood estimation more diffcult. In this paper we first identify parameter settings for univariate and bivariate models that suffer from poor identification in finite samples and may therefore lead to estimation problems. Second, we propose to investigate the extent of poor identification by using expected log-likelihoods and variations thereof which are faster to simulate than multivariate finite sample d...
In this paper we quantify the impact of model mis-specification on the properties of parameter estim...
This short paper provides a comprehensive set of new theoretical results on the impact of mis-specif...
In this paper fractionally integrated ARIMA (ARFIMA) models are estimated using an extended version ...
Fractionally integrated vector autoregressive models allow to capture persistence in time series dat...
We state that long-run restrictions that identify structural shocks in VAR models with unit roots lo...
In this paper, we extend the well-known Sims, Stock and Watson (SSW)(Sims et al. 1990; Econometrica ...
This paper introduces a multivariate long-memory model with structural breaks. In the proposed frame...
This paper introduces a multivariate long-memory model with structural breaks. In the proposed frame...
This paper analyses impulse response functions in the context of vector fractionally integrated time...
In this paper we extend the well-known Sims, Stock and Watson (SSW, 1990)’s analysis on estimation a...
We consider statistical inference for multivariate fractionally integrated time series models using ...
We investigate a setup for fractionally cointegrated time series which is formulated in terms of lat...
<p>This article discusses identification problems in the fractionally cointegrated system of Johanse...
This article discusses identification problems in the fractionally cointegrated system of Johansen a...
Most of the long memory estimators for stationary fractionally integrated time series models are kno...
In this paper we quantify the impact of model mis-specification on the properties of parameter estim...
This short paper provides a comprehensive set of new theoretical results on the impact of mis-specif...
In this paper fractionally integrated ARIMA (ARFIMA) models are estimated using an extended version ...
Fractionally integrated vector autoregressive models allow to capture persistence in time series dat...
We state that long-run restrictions that identify structural shocks in VAR models with unit roots lo...
In this paper, we extend the well-known Sims, Stock and Watson (SSW)(Sims et al. 1990; Econometrica ...
This paper introduces a multivariate long-memory model with structural breaks. In the proposed frame...
This paper introduces a multivariate long-memory model with structural breaks. In the proposed frame...
This paper analyses impulse response functions in the context of vector fractionally integrated time...
In this paper we extend the well-known Sims, Stock and Watson (SSW, 1990)’s analysis on estimation a...
We consider statistical inference for multivariate fractionally integrated time series models using ...
We investigate a setup for fractionally cointegrated time series which is formulated in terms of lat...
<p>This article discusses identification problems in the fractionally cointegrated system of Johanse...
This article discusses identification problems in the fractionally cointegrated system of Johansen a...
Most of the long memory estimators for stationary fractionally integrated time series models are kno...
In this paper we quantify the impact of model mis-specification on the properties of parameter estim...
This short paper provides a comprehensive set of new theoretical results on the impact of mis-specif...
In this paper fractionally integrated ARIMA (ARFIMA) models are estimated using an extended version ...