We study the fitting of time series models via the minimization of a multi-step-ahead forecast error criterion that is based on the asymptotic average of squared forecast errors. Our objective function uses frequency domain concepts, but is formulated in the time domain, and allows the estimation of all linear processes (e.g., ARIMA and component ARIMA). By using an asymptotic form of the forecast mean squared error, we obtain a well-defined nonlinear function of the parameters that is proven to be minimized at the true parameter vector when the model is correctly specified. We derive the statistical properties of the parameter estimates, and study the asymptotic impact of model misspecification on multi-step-ahead forecasting. The method i...
The authors delineate conditions which favor multistep, or dynamic, estimation for multistep forecas...
We evaluate the asymptotic and finite-sample properties of direct multi-step estimation (DMS) for fo...
We delineate conditions which favour multi-step, or dynamic, estimation for multi-step forecasting. ...
This paper brings together two topics in the estimation of time series forecasting models: the use o...
This paper evaluates multistep estimation for the purposes of signal extraction, and in particular t...
We consider the problem of multistep-ahead prediction in time series analysis by using nonparametric...
We consider the problem of multistep-ahead prediction in time series analysis by using nonparametric...
Many modern statistical models are used for both insight and prediction when applied to data. When m...
Many modern statistical models are used for both insight and prediction when applied to data. When m...
Forecasting for nonlinear time series is an important topic intime series analysis. Existing numeric...
This paper unifies two methodologies for multi-step forecasting from autoregressive time series mode...
We consider the problem of multi-step ahead prediction in time series analysis using the non-paramet...
Abstract. Multistep-ahead prediction is the task of predicting a sequence of values in a time series...
We consider the problem of multi-step ahead prediction in time series analysis using the non-paramet...
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...
We evaluate the asymptotic and finite-sample properties of direct multi-step estimation (DMS) for fo...
We delineate conditions which favour multi-step, or dynamic, estimation for multi-step forecasting. ...
This paper brings together two topics in the estimation of time series forecasting models: the use o...
This paper evaluates multistep estimation for the purposes of signal extraction, and in particular t...
We consider the problem of multistep-ahead prediction in time series analysis by using nonparametric...
We consider the problem of multistep-ahead prediction in time series analysis by using nonparametric...
Many modern statistical models are used for both insight and prediction when applied to data. When m...
Many modern statistical models are used for both insight and prediction when applied to data. When m...
Forecasting for nonlinear time series is an important topic intime series analysis. Existing numeric...
This paper unifies two methodologies for multi-step forecasting from autoregressive time series mode...
We consider the problem of multi-step ahead prediction in time series analysis using the non-paramet...
Abstract. Multistep-ahead prediction is the task of predicting a sequence of values in a time series...
We consider the problem of multi-step ahead prediction in time series analysis using the non-paramet...
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...
We evaluate the asymptotic and finite-sample properties of direct multi-step estimation (DMS) for fo...
We delineate conditions which favour multi-step, or dynamic, estimation for multi-step forecasting. ...