Many modern statistical models are used for both insight and prediction when applied to data. When models are used for prediction one should optimise parameters through a prediction error loss function. Estimation methods based on multiple steps ahead forecast errors have been shown to lead to more robust and less biased estimates of parameters. However, a plausible explanation of why this is the case is lacking. In this paper, we provide this explanation, showing that the main benefit of these estimators is in a shrinkage effect, happening in univariate models naturally. However, this can introduce a series of limitations, due to overly aggressive shrinkage. We discuss the predictive likelihoods related to the multistep estimators and demo...
The authors delineate conditions which favor multistep, or dynamic, estimation for multistep forecas...
The authors delineate conditions which favor multistep, or dynamic, estimation for multistep forecas...
Time-varying parameter (TVP) regression models can involve a huge number of coefficients. Careful pr...
Many modern statistical models are used for both insight and prediction when applied to data. When m...
Accurate forecasts are of principal importance for operations. Exponential smoothing is widely used ...
Exponential smoothing is widely used in practice and has shown its efficacy and reliability in many ...
The paper provides a proof of consistency of the ridge estimator for regressions where the number of...
We study the fitting of time series models via the minimization of a multi-step-ahead forecast error...
Time-varying parameter (TVP) models have the potential to be over-parameterized, particularly when t...
The paper provides a proof of consistency of the ridge estimator for regressions where the number of...
This paper evaluates multistep estimation for the purposes of signal extraction, and in particular t...
We delineate conditions which favour multi-step, or dynamic, estimation for multi-step forecasting. ...
We delineate conditions which favour multi-step, or dynamic estimation for multi-step forecasting. A...
Tiao and Xu (1993) proposed a test of whether a time series model, estimated by maximum likelihood, ...
This paper brings together two topics in the estimation of time series forecasting models: the use o...
The authors delineate conditions which favor multistep, or dynamic, estimation for multistep forecas...
The authors delineate conditions which favor multistep, or dynamic, estimation for multistep forecas...
Time-varying parameter (TVP) regression models can involve a huge number of coefficients. Careful pr...
Many modern statistical models are used for both insight and prediction when applied to data. When m...
Accurate forecasts are of principal importance for operations. Exponential smoothing is widely used ...
Exponential smoothing is widely used in practice and has shown its efficacy and reliability in many ...
The paper provides a proof of consistency of the ridge estimator for regressions where the number of...
We study the fitting of time series models via the minimization of a multi-step-ahead forecast error...
Time-varying parameter (TVP) models have the potential to be over-parameterized, particularly when t...
The paper provides a proof of consistency of the ridge estimator for regressions where the number of...
This paper evaluates multistep estimation for the purposes of signal extraction, and in particular t...
We delineate conditions which favour multi-step, or dynamic, estimation for multi-step forecasting. ...
We delineate conditions which favour multi-step, or dynamic estimation for multi-step forecasting. A...
Tiao and Xu (1993) proposed a test of whether a time series model, estimated by maximum likelihood, ...
This paper brings together two topics in the estimation of time series forecasting models: the use o...
The authors delineate conditions which favor multistep, or dynamic, estimation for multistep forecas...
The authors delineate conditions which favor multistep, or dynamic, estimation for multistep forecas...
Time-varying parameter (TVP) regression models can involve a huge number of coefficients. Careful pr...