The Beveridge-Nelson decomposition defines the trend component in terms of the eventual forecast function, as the value the series would take if it were on its long-run path. The paper introduces the multistep Beveridge-Nelson decomposition, which arises when the forecast function is obtained by the direct autoregressive approach, which optimizes the predictive ability of the AR model at forecast horizons greater than one. We compare our proposal with the standard Beveridge-Nelson decomposition, for which the forecast function is obtained by iterating the one-step-ahead predictions via the chain rule. We illustrate that the multistep Beveridge-Nelson trend is more efficient than the standard one in the presence of model misspecification and...
A well known property of the Beveridge Nelson decomposition is that the innovations in the permanent...
We present a new approach to trend/cycle decomposition of time series that follow regime-switching p...
A new method is proposed to estimate the long-term seasonal component by a multistage optimization f...
The Beveridge–Nelson decomposition defines the trend component in terms of the eventual forecast fun...
The Beveridge-Nelson decomposition defines the trend component in terms of the eventual forecast fun...
The Beveridge-Nelson (BN) decomposition is a model-based method for decomposing time series into per...
In this work we deal with the Beveridge-Nelson decomposition of a linear process into a trend and a ...
The purpose of this paper is to present a decomposition into trend or permanent component and cycle ...
The Beveridge–Nelson decomposition calculates trend and cycle for an integrated time series. However...
This note describes a much simpler computational method for carrying out the Beveridge and Nelson de...
The paper focuses on the comparison of the direct and iterated AR predictors when Xt is a difference...
This paper unifies two methodologies for multi-step forecasting from autoregressive time series mode...
Computes a multivariate Beveridge-Nelson decomposition of a set of series via a vector autoregressio...
We show in the paper that the decomposition proposed by Beveridge and Nelson (1981) for models that ...
AbstractThis paper deals with the prediction of curve-valued autoregression processes. It develops a...
A well known property of the Beveridge Nelson decomposition is that the innovations in the permanent...
We present a new approach to trend/cycle decomposition of time series that follow regime-switching p...
A new method is proposed to estimate the long-term seasonal component by a multistage optimization f...
The Beveridge–Nelson decomposition defines the trend component in terms of the eventual forecast fun...
The Beveridge-Nelson decomposition defines the trend component in terms of the eventual forecast fun...
The Beveridge-Nelson (BN) decomposition is a model-based method for decomposing time series into per...
In this work we deal with the Beveridge-Nelson decomposition of a linear process into a trend and a ...
The purpose of this paper is to present a decomposition into trend or permanent component and cycle ...
The Beveridge–Nelson decomposition calculates trend and cycle for an integrated time series. However...
This note describes a much simpler computational method for carrying out the Beveridge and Nelson de...
The paper focuses on the comparison of the direct and iterated AR predictors when Xt is a difference...
This paper unifies two methodologies for multi-step forecasting from autoregressive time series mode...
Computes a multivariate Beveridge-Nelson decomposition of a set of series via a vector autoregressio...
We show in the paper that the decomposition proposed by Beveridge and Nelson (1981) for models that ...
AbstractThis paper deals with the prediction of curve-valued autoregression processes. It develops a...
A well known property of the Beveridge Nelson decomposition is that the innovations in the permanent...
We present a new approach to trend/cycle decomposition of time series that follow regime-switching p...
A new method is proposed to estimate the long-term seasonal component by a multistage optimization f...