In this paper, we propose a simulation-based method for computing point and density forecasts for univariate noncausal and non-Gaussian autoregressive processes. Numerical methods are needed to forecast such time series because the prediction problem is generally nonlinear and no analytic solution is therefore available. According to a limited simulation experiment, the use of a correct noncausal model can lead to substantial gains in forecast accuracy over the corresponding causal model. An empirical application to U.S. inflation demonstrates the importance of allowing for noncausality in improving point and density forecasts
Forecasting for nonlinear time series is an important topic intime series analysis. Existing numeric...
This work develops maximum likelihood-based unit root tests in the noncausal autoregressive (NCAR) m...
The main purpose of this dissertation is to compare the in-sample estimating and out-of-sample forec...
In this paper, we propose a simulation-based method for computing point and density forecasts for un...
This paper is concerned with univariate noncausal autoregressive models and their potential usefulne...
In this paper, we compare the forecasting performance of univariate noncausal and conventional causa...
In this paper, we propose a Bayesian estimation and prediction procedure for noncausal autoregressiv...
This paper is concerned with univariate noncausal autoregressive models and their potential usefulne...
In this paper, we compare the forecasting performance of univariate noncausal and conventional causa...
In this paper, we propose a new noncausal vector autoregressive (VAR) model for non-Gaussian time se...
The use of linear parametric models for forecasting economic time series is widespread among practit...
Recently Stock and Watson (2007) showed that since the mid-1980s it has been hard for backward-looki...
The problem of predicting a future value of a time series is considered in this paper. If the series...
This thesis incorporates the compilation and derivation of the theory required for an interactive fo...
Numerous time series models are available for forecasting economic output. Autoregressive models wer...
Forecasting for nonlinear time series is an important topic intime series analysis. Existing numeric...
This work develops maximum likelihood-based unit root tests in the noncausal autoregressive (NCAR) m...
The main purpose of this dissertation is to compare the in-sample estimating and out-of-sample forec...
In this paper, we propose a simulation-based method for computing point and density forecasts for un...
This paper is concerned with univariate noncausal autoregressive models and their potential usefulne...
In this paper, we compare the forecasting performance of univariate noncausal and conventional causa...
In this paper, we propose a Bayesian estimation and prediction procedure for noncausal autoregressiv...
This paper is concerned with univariate noncausal autoregressive models and their potential usefulne...
In this paper, we compare the forecasting performance of univariate noncausal and conventional causa...
In this paper, we propose a new noncausal vector autoregressive (VAR) model for non-Gaussian time se...
The use of linear parametric models for forecasting economic time series is widespread among practit...
Recently Stock and Watson (2007) showed that since the mid-1980s it has been hard for backward-looki...
The problem of predicting a future value of a time series is considered in this paper. If the series...
This thesis incorporates the compilation and derivation of the theory required for an interactive fo...
Numerous time series models are available for forecasting economic output. Autoregressive models wer...
Forecasting for nonlinear time series is an important topic intime series analysis. Existing numeric...
This work develops maximum likelihood-based unit root tests in the noncausal autoregressive (NCAR) m...
The main purpose of this dissertation is to compare the in-sample estimating and out-of-sample forec...